WO2023000703A1 - Image acquisition system, three-dimensional reconstruction method and apparatus, device and storage medium - Google Patents

Image acquisition system, three-dimensional reconstruction method and apparatus, device and storage medium Download PDF

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Publication number
WO2023000703A1
WO2023000703A1 PCT/CN2022/082917 CN2022082917W WO2023000703A1 WO 2023000703 A1 WO2023000703 A1 WO 2023000703A1 CN 2022082917 W CN2022082917 W CN 2022082917W WO 2023000703 A1 WO2023000703 A1 WO 2023000703A1
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image
supplementary light
dimensional reconstruction
images
image acquisition
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PCT/CN2022/082917
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French (fr)
Chinese (zh)
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毋戈
王海君
陈相礼
柴学智
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北京百度网讯科技有限公司
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Publication of WO2023000703A1 publication Critical patent/WO2023000703A1/en

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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T17/00Three dimensional [3D] modelling, e.g. data description of 3D objects

Definitions

  • the present disclosure relates to the field of computer technology, in particular to the field of computer vision technology, and in particular to an image acquisition system, a three-dimensional reconstruction method, device, equipment, and storage medium.
  • 3D modeling is an important research field in computer graphics and computer vision. Its goal is to capture the 3D shape and appearance of objects and scenes with high quality to simulate 3D interaction and perception in digital spaces.
  • the disclosure provides an image acquisition system, a three-dimensional reconstruction method, a device, a device, and a storage medium.
  • an image acquisition system including: a shooting platform; a plurality of supplementary light devices arranged around the shooting platform, the relative positions of the plurality of supplementary light devices and the shooting platform are fixed, and the plurality of supplementary light devices are connected to the first
  • a controller is connected, and is configured to issue a supplementary light pattern at the same time when receiving the supplementary light instruction sent by the first controller, and perform supplementary light on the target object fixed on the shooting platform; and at least one image that can rotate around the shooting platform Acquisition device, at least one image acquisition device is connected to the second controller, and is configured to respond to the acquisition instruction sent by the second controller to photograph the target object at a plurality of preset acquisition positions, so as to acquire images of the target object .
  • a three-dimensional reconstruction method including: acquiring a first set of images of the target object, and the first set of images is sent through the image acquisition system as described in the first aspect when multiple supplementary light devices emit supplementary light patterns Acquisition, any two first images in the first image set have overlapping areas, and each first image includes part or all of the preset pattern; extracting feature points of each first image in the first image set; according to each first image performing feature point matching on at least two first images with overlapping regions to obtain a matching feature point set; based on the matching feature point set, performing 3D reconstruction on the target object to obtain a 3D reconstruction model.
  • a three-dimensional reconstruction device including: a first image acquisition unit configured to acquire a first set of images of a target object, and the first set of images is multi-purpose through the image acquisition system described in the first aspect. Collecting when a supplementary light device emits a supplementary light pattern, any two first images in the first image set have overlapping areas, and each first image includes part or all of the preset pattern; the feature point extraction unit is configured to extract the first image.
  • the feature points of each first image in an image set is configured to perform feature point matching on at least two first images with overlapping regions according to the feature points of each first image, to obtain a matching feature point set
  • the 3D reconstruction unit is configured to perform 3D reconstruction on the target object based on the matching feature point set to obtain a 3D reconstruction model.
  • an electronic device comprising: at least one processor; and a memory communicatively connected to the at least one processor; wherein, the memory stores instructions executable by the at least one processor, and the instructions are executed by at least one processor. Executed by a processor, so that at least one processor can execute the three-dimensional reconstruction method described in the second aspect.
  • a non-transitory computer-readable storage medium storing computer instructions, the computer instructions are used to make a computer execute the three-dimensional reconstruction method as described in the second aspect.
  • a computer program product includes a computer program, and when the computer program is executed by a processor, the three-dimensional reconstruction method as described in the second aspect is implemented.
  • the three-dimensional reconstruction process can be optimized, and objects lacking surface texture features can be effectively reconstructed in three dimensions at a relatively low cost.
  • FIG. 1 is an exemplary system architecture diagram to which an embodiment of the present disclosure can be applied;
  • Figure 2a shows a top view of an image acquisition system according to the present disclosure
  • Fig. 2b shows a schematic perspective view of an image acquisition system according to the present disclosure
  • FIG. 3 is a flowchart of an embodiment of a three-dimensional reconstruction method according to the present disclosure
  • FIG. 4 is a flowchart of another embodiment of a three-dimensional reconstruction method according to the present disclosure.
  • FIG. 5 is a comparison diagram of a target object, a reconstruction failure, and a successful reconstruction according to the three-dimensional reconstruction method of the present disclosure
  • Fig. 6 is a schematic structural diagram of an embodiment of a three-dimensional reconstruction device according to the present disclosure.
  • FIG. 7 is a block diagram of an electronic device for implementing the three-dimensional reconstruction method of the embodiment of the present disclosure.
  • FIG. 1 shows an exemplary system architecture 100 to which embodiments of the image acquisition system, three-dimensional reconstruction method or three-dimensional reconstruction apparatus of the present disclosure can be applied.
  • a system architecture 100 may include an image acquisition system 101 , a network 102 and a terminal device 103 .
  • the network 102 is used as a medium for providing a communication link between the image acquisition system 101 and the terminal device 103 .
  • Network 102 may include various connection types, such as wires, wireless communication links, or fiber optic cables, among others.
  • the image acquisition system 101 may be a system for acquiring images of a target object, which includes a plurality of hardware. Multiple pieces of hardware work together to capture compliant images.
  • the image collection system 101 can send the multiple collected images to the terminal device 103 through the network 102 .
  • the terminal device 103 may process the multiple received images to perform 3D reconstruction to obtain a 3D reconstruction model.
  • Various communication client applications such as image processing applications, can be installed on the terminal device 103 .
  • the user can view the above three-dimensional reconstruction model through the display screen of the terminal device 103 .
  • the terminal device 103 may be hardware or software.
  • the terminal device 103 When the terminal device 103 is hardware, it may be various electronic devices, including but not limited to smartphones, tablet computers, e-book readers, vehicle-mounted computers, laptop computers, desktop computers, and the like.
  • the terminal device 103 When the terminal device 103 is software, it can be installed in the electronic devices listed above. It can be implemented as a plurality of software or software modules (for example, to provide distributed services), or as a single software or software module. No specific limitation is made here.
  • the three-dimensional reconstruction method provided by the embodiment of the present disclosure is generally executed by the terminal device 103 .
  • the three-dimensional reconstruction apparatus is generally set in the terminal device 103 .
  • terminal devices, networks and servers in Fig. 1 are only illustrative. According to the implementation needs, there can be any number of terminal devices, networks and servers.
  • FIG. 2a shows a top view of the image acquisition system according to the present disclosure
  • FIG. 2b shows a perspective view of the image acquisition system according to the present disclosure
  • the image acquisition system may include a plurality of supplementary light devices 201 , a photographing stage 202 and at least one image acquisition device 203 .
  • a plurality of supplementary light devices 201 are arranged around the shooting platform 202 , and their relative positions to the shooting platform 202 are fixed.
  • the plurality of supplementary light devices 201 and the photographing stage 202 can be fixed by the same fixing device, so that the relative positions between the plurality of supplementary light devices 201 and the photographing stage 202 are fixed.
  • At least one image capture device 203 can rotate around the shooting platform 202 .
  • at least one image acquisition device 203 may be fixedly connected to the photographing platform 202 through a rotatable connection.
  • the photographing platform 202 may be fixedly connected to at least one image acquisition device 203 through a rotatable connection.
  • the relative rotation between at least one image capture device 203 and the capture platform 202 can be realized by rotating the capture platform 202, and the relative rotation between at least one image capture device 203 and the capture platform 202 can also be realized by rotating the at least one image capture device 203.
  • Multiple supplementary light devices 201 can be connected with the first controller (not shown in the figure).
  • the first controller may send supplementary light instructions to multiple supplementary light devices 201 .
  • the plurality of supplementary light devices 201 can send supplementary light patterns at the same time when or after receiving the supplementary light instruction sent by the first controller, so as to implement supplementary light for the target object fixed on the shooting stage.
  • Multiple supplementary light devices 201 can emit preset patterns, or emit laser spots.
  • At least one image acquisition device 203 may be connected to a second controller (not shown in the figure).
  • the second controller may send an acquisition instruction to at least one image acquisition device 203 .
  • At least one image acquisition device 203 can photograph the target object fixed on the shooting platform at multiple preset acquisition positions when or after receiving the acquisition instruction sent by the second controller, so as to acquire the image of the target object .
  • the image acquisition system provided by the above-mentioned embodiments of the present disclosure can supplement light to a target object fixed on a shooting platform through a light supplement device, thereby providing light texture for objects lacking surface texture features, and improving the efficiency and accuracy of 3D reconstruction.
  • the image acquisition system may include four supplementary light devices.
  • the above four supplementary light devices can be distributed on a circular track around the shooting platform.
  • the supplementary light ranges of two adjacent supplementary light devices overlap. In this way, it is more convenient to perform feature point matching and three-dimensional reconstruction on images collected at the junction of two adjacent supplementary light devices.
  • the above-mentioned multiple supplementary light devices 201 may be evenly arranged around the shooting platform 202, and the supplementary light patterns emitted by the multiple supplementary light devices 201 cover the entire surface of the target object.
  • a plurality of supplementary light devices 201 may be uniformly arranged around the shooting platform 202 . If multiple supplementary light devices 201 are distributed on a circular track around the shooting platform, the central angles between two adjacent supplementary light devices are the same. Moreover, in order to ensure the integrity of the three-dimensional reconstruction of the target object, it is necessary to make the supplementary light patterns emitted by the plurality of supplementary light devices 201 cover the entire surface of the target object.
  • the above preset multiple collection positions include multiple collection position sets, and the collection positions in each collection position set are located on the same circular orbit.
  • the preset multiple collection locations may be divided into multiple collection location sets. Multiple collection locations in each collection location set are located on the same circular orbit. The distribution of different circular orbits differs from the relative height of the target object. By setting these collection positions at different heights and different angles, the collection of images of the entire surface of the target object can be realized.
  • a central angle between two adjacent collection positions in each collection position set is within a preset angle range.
  • the central angle between two adjacent collection locations in a single collection location set may be within a preset angle range. It can be understood that if the central angle between two adjacent collection positions is relatively large, the coincidence degree between the images of the two adjacent collection positions is small, making the effect of three-dimensional reconstruction of the target object poor. If the central angle between two adjacent collection positions is small, the coincidence degree between the images of the two adjacent collection positions will be relatively large, which greatly increases the amount of calculation. Therefore, in this implementation manner, the central angle between the two acquisition positions can be set within a preset angle range, thereby ensuring the rationality of the number of acquired images and the accuracy of the three-dimensional reconstruction effect.
  • the photographing table 202 and the plurality of supplementary light devices 201 may rotate synchronously.
  • the relative positions between the shooting platform and each image acquisition device may be changed.
  • the change of the relative position can be realized by fixing the position of each image acquisition device and rotating the photographing table and multiple supplementary light devices. It is also possible to change the relative positions by fixing the positions of the shooting table and multiple supplementary light devices, and rotating each image acquisition device.
  • the colors of the supplementary light patterns emitted by the above-mentioned plurality of supplementary light devices 201 can be switched.
  • multiple supplementary light devices can emit visible light of various colors.
  • the executive body can set the color of the supplementary light pattern according to the color of the surface of the target object.
  • the color of the supplementary light image and the color of the surface of the target object have a higher contrast, thereby facilitating the extraction of feature points and further facilitating the three-dimensional reconstruction.
  • the supplementary light patterns emitted by the plurality of supplementary light devices 201 do not illuminate the optical lens of at least one image acquisition device 203 .
  • each image acquisition device can properly adjust the angle of the image acquisition device when acquiring an image of a target object, so that the target object can always be kept at the center of the camera field of view, which can Reduce the error caused by the distortion of the image edge to the 3D reconstruction.
  • FIG. 3 shows a flow 300 of an embodiment of the three-dimensional reconstruction method according to the present disclosure.
  • the method of this embodiment may include the following steps:
  • Step 301 acquire a first set of images of a target object.
  • the execution subject of the three-dimensional reconstruction method may first acquire the first image set of the target object.
  • the first set of images may be collected by the image acquisition system described in the embodiment of FIG. 2a and FIG. 2b when multiple supplementary light devices turn on the supplementary light to irradiate the supplementary light pattern to the target object.
  • At least two first images in the first image set have overlapping areas.
  • each first image includes part or all of the preset pattern.
  • Step 302 extract feature points of each first image in the first image set.
  • the execution subject may perform feature point extraction on each first image in the first image set.
  • the feature points may be points with special characteristics such as edge points and corner points.
  • the executive body can use existing feature point extraction algorithms to extract feature points, such as SRUF (Speeded Up Robust Features, accelerated robust features), SIFT (Scale-invariant feature transform, scale-invariant feature transform), AKAZE (KAZE's Accelerated version), deep learning network, etc.
  • SRUF Speeded Up Robust Features, accelerated robust features
  • SIFT Scale-invariant feature transform, scale-invariant feature transform
  • AKAZE KAZE's Accelerated version
  • deep learning network etc.
  • Step 303 according to the feature points of each first image, perform feature point matching on at least two first images with overlapping areas, to obtain a matching feature point set.
  • the execution subject may perform feature point matching on at least two first images with overlapping areas to obtain matched feature points. These matched feature points are used to determine the relationship between at least two first images with overlapping regions, which is convenient for candidate grid reconstruction.
  • the execution subject can use but not limited to ANN (approximate nearest neighbor, approximate nearest neighbor search), Optical Flow and other methods for matching.
  • Step 304 based on the matching feature point set, perform 3D reconstruction on the target object to obtain a 3D reconstruction model.
  • the execution subject can use the set of matching feature points to perform 3D reconstruction. Specifically, the execution subject may determine the three-dimensional coordinates of each feature point in the matching feature point set, perform three-dimensional reconstruction according to each three-dimensional coordinate, and obtain a three-dimensional reconstruction model.
  • the 3D reconstruction method provided by the above-mentioned embodiments of the present disclosure, by introducing light textures, combining software and hardware, and optimizing the 3D reconstruction process, can perform effective 3D reconstruction on objects lacking surface texture features at a relatively low cost, and can significantly expand The scope of application of image-based 3D reconstruction algorithms.
  • FIG. 4 shows a flow 400 of another embodiment of the three-dimensional reconstruction method according to the present disclosure.
  • the method of this embodiment may include the following steps:
  • Step 401 acquire a first image set and a second image set of a target object.
  • the above-mentioned first image set and second image set can be acquired by the image acquisition system described in the embodiment of Fig. 2a and Fig. 2b.
  • each first image in the first image set is in one-to-one correspondence with each second image in the second image set.
  • the corresponding first and second images are captured at the same capture location.
  • the first image is collected when the supplementary light device emits the supplementary light pattern
  • the second image is collected when the supplementary light device does not emit the supplementary light pattern.
  • Step 402 extract feature points of each first image in the first image set.
  • Step 403 according to the feature points of each first image, perform feature point matching on at least two first images with overlapping areas to obtain a matching feature point set.
  • Step 404 determining the three-dimensional coordinates of each matching feature point in the matching feature point set and the camera pose of each first image.
  • the execution subject may determine the three-dimensional coordinates of each matching feature point in the matching feature point set after obtaining the matching feature point set. Specifically, the execution subject can first determine the coordinates of the feature points in the image coordinate system, and then combine the conversion relationship between the image coordinate system and the world coordinate system to convert the two-dimensional coordinates in the image coordinate system into the coordinates in the world coordinate system. 3D coordinates. At the same time, the execution subject can also determine the camera pose of each first image according to the position and angle of each image acquisition device, and the internal parameters and external parameters of the image acquisition device.
  • Step 405 calculate a dense point cloud according to the three-dimensional coordinates of each matching feature point and the camera pose of each first image.
  • the execution subject After the execution subject determines the three-dimensional coordinates of each matching feature point, it can be used as a sparse point cloud. Combining the camera poses of each first image, the three-dimensional coordinates of each pixel in the first image can be determined to obtain a dense point cloud. Specifically, when calculating dense point clouds, the execution subject can use but not limited to CMVS (Clustering Multi-View Stereo, multi-view clustering), PMVS (Patch-based Multi-View Stereo, multi-view clustering based on patches) , Deep learning (MVS-Net, etc.) algorithm.
  • CMVS Clustering Multi-View Stereo, multi-view clustering
  • PMVS Patch-based Multi-View Stereo, multi-view clustering based on patches
  • VMS-Net Deep learning
  • Step 406 perform surface mesh reconstruction according to the dense point cloud, and determine a 3D reconstruction model.
  • Surface mesh reconstruction can be performed through the above dense point cloud.
  • the execution subject can construct triangular patches according to the 3D coordinates of each point in the dense point cloud, and connect the triangular patches to obtain a 3D reconstruction model.
  • the executive body can also use the Poisson reconstruction algorithm to perform three-dimensional reconstruction.
  • Step 407 determine a texture image according to the second image set.
  • the execution subject may also determine the texture image according to the second image set. Specifically, the execution subject may use a deep learning algorithm to determine the texture image.
  • Step 408 fusing the texture image into the 3D reconstruction model.
  • the executive body can fuse the texture image to the 3D reconstructed model.
  • the 3D reconstruction model can be fused according to the position corresponding to each pixel in the texture image.
  • the three-dimensional reconstruction method provided by the above-mentioned embodiments of the present disclosure can improve the reconstruction effect of an object lacking texture.
  • FIG. 5 shows images of target objects, images of failed reconstructions, and results of 3D reconstruction using the 3D reconstruction method of this embodiment. It can be seen from the comparison that the 3D reconstruction method of this embodiment effectively improves the success rate of 3D reconstruction of objects lacking in texture.
  • the present disclosure provides an embodiment of a three-dimensional reconstruction device, which corresponds to the method embodiments shown in FIG. 2a and FIG. 2b.
  • the device can be specifically applied to various electronic devices.
  • the 3D reconstruction device 600 of this embodiment includes: a first image acquisition unit 601 , a feature point extraction unit 602 , a feature point matching unit 603 and a 3D reconstruction unit 604 .
  • the first image acquiring unit 601 is configured to acquire a first image set of a target object.
  • the first image set is collected by the image acquisition system described in the embodiment of Fig. 2a and Fig. 2b when a plurality of supplementary light devices emit supplementary light patterns, any two first images in the first image set have overlapping areas, and each second An image includes part or all of the preset pattern.
  • the feature point extraction unit 602 is configured to extract feature points of each first image in the first image set.
  • the feature point matching unit 603 is configured to perform feature point matching on at least two first images with overlapping regions according to the feature points of each first image, to obtain a matching feature point set.
  • the 3D reconstruction unit 604 is configured to perform 3D reconstruction of the target object based on the matching feature point set to obtain a 3D reconstruction model.
  • the apparatus 600 may further include not shown in FIG. 6 : a second image acquisition unit, a texture image determination unit, and a texture image fusion unit.
  • the second image acquisition unit is configured to acquire a second image set, and the second image set is acquired by the image acquisition system as described in the embodiment of Fig. 2a and Fig. 2b when the plurality of supplementary light devices do not emit supplementary light patterns.
  • the texture image determining unit is configured to determine the texture image according to the second set of images.
  • the texture image fusion unit is configured to fuse the texture image into the three-dimensional reconstruction model.
  • the 3D reconstruction unit 604 may be further configured to: determine the 3D coordinates of each matching feature point in the matching feature point set and the camera pose of each first image; The 3D coordinates of the first image and the camera pose of each first image are calculated to calculate the dense point cloud; the surface mesh is reconstructed according to the dense point cloud to determine the 3D reconstruction model.
  • the units 601 to 604 recorded in the three-dimensional reconstruction apparatus 600 respectively correspond to the steps in the method described with reference to FIG. 3 . Therefore, the operations and features described above for the three-dimensional reconstruction method are also applicable to the device 600 and the units contained therein, and will not be repeated here.
  • the present disclosure also provides an electronic device, a readable storage medium, and a computer program product.
  • FIG. 7 shows a block diagram of an electronic device 700 for performing a three-dimensional reconstruction method according to an embodiment of the present disclosure.
  • Electronic device is intended to represent various forms of digital computers, such as laptops, desktops, workstations, personal digital assistants, servers, blade servers, mainframes, and other suitable computers.
  • Electronic devices may also represent various forms of mobile devices, such as personal digital processing, cellular telephones, smart phones, wearable devices, and other similar computing devices.
  • the components shown herein, their connections and relationships, and their functions, are by way of example only, and are not intended to limit implementations of the disclosure described and/or claimed herein.
  • an electronic device 700 includes a processor 701 that can execute according to a computer program stored in a read-only memory (ROM) 702 or loaded from a memory 708 into a random access memory (RAM) 703. Various appropriate actions and treatments. In the RAM 703, various programs and data necessary for the operation of the electronic device 700 can also be stored.
  • the processor 701, ROM 702, and RAM 703 are connected to each other through a bus 704.
  • An I/O interface (input/output interface) 705 is also connected to the bus 704 .
  • the I/O interface 705 includes: an input unit 706, such as a keyboard, a mouse, etc.; an output unit 707, such as various types of displays, speakers, etc.; a memory 708, such as a magnetic disk, an optical disk, etc. ; and a communication unit 709, such as a network card, a modem, a wireless communication transceiver, and the like.
  • the communication unit 709 allows the electronic device 700 to exchange information/data with other devices through a computer network such as the Internet and/or various telecommunication networks.
  • Processor 701 may be various general and/or special purpose processing components having processing and computing capabilities. Some examples of processor 701 include, but are not limited to, central processing units (CPUs), graphics processing units (GPUs), various dedicated artificial intelligence (AI) computing chips, various processors that run machine learning model algorithms, digital signal processing processor (DSP), and any suitable processor, controller, microcontroller, etc.
  • the processor 701 executes various methods and processes described above, such as a three-dimensional reconstruction method.
  • the three-dimensional reconstruction method may be implemented as a computer software program tangibly embodied on a machine-readable storage medium, such as memory 708.
  • part or all of the computer program can be loaded and/or installed on the electronic device 700 via the ROM 702 and/or the communication unit 709.
  • the computer program is loaded into RAM 703 and executed by processor 701, one or more steps of the three-dimensional reconstruction method described above can be performed.
  • the processor 701 may be configured in any other appropriate way (for example, by means of firmware) to execute the three-dimensional reconstruction method.
  • Various implementations of the systems and techniques described above herein can be implemented in digital electronic circuit systems, integrated circuit systems, field programmable gate arrays (FPGAs), application specific integrated circuits (ASICs), application specific standard products (ASSPs), systems on chips Implemented in a system of systems (SOC), load programmable logic device (CPLD), computer hardware, firmware, software, and/or combinations thereof.
  • FPGAs field programmable gate arrays
  • ASICs application specific integrated circuits
  • ASSPs application specific standard products
  • SOC system of systems
  • CPLD load programmable logic device
  • computer hardware firmware, software, and/or combinations thereof.
  • programmable processor can be special-purpose or general-purpose programmable processor, can receive data and instruction from storage system, at least one input device, and at least one output device, and transmit data and instruction to this storage system, this at least one input device, and this at least one output device an output device.
  • Program codes for implementing the methods of the present disclosure may be written in any combination of one or more programming languages.
  • the above program code can be packaged into a computer program product.
  • These program codes or computer program products may be provided to a processor or controller of a general-purpose computer, a special-purpose computer, or other programmable data processing apparatus, so that the program codes, when executed by the processor 701, make the flow diagrams and/or block diagrams specified The function/operation is implemented.
  • the program code may execute entirely on the machine, partly on the machine, as a stand-alone software package partly on the machine and partly on a remote machine or entirely on the remote machine or server.
  • a machine-readable storage medium may be a tangible medium that may contain or store a program for use by or in conjunction with an instruction execution system, apparatus, or device.
  • the machine-readable storage medium may be a machine-readable signal storage medium or a machine-readable storage medium.
  • a machine-readable storage medium may include, but is not limited to, electronic, magnetic, optical, electromagnetic, infrared, or semiconductor systems, apparatus, or devices, or any suitable combination of the foregoing.
  • machine-readable storage media would include one or more wire-based electrical connections, portable computer discs, hard drives, random access memory (RAM), read only memory (ROM), erasable programmable read only memory (EPROM or flash memory), optical fiber, compact disk read-only memory (CD-ROM), optical storage devices, magnetic storage devices, or any suitable combination of the foregoing.
  • RAM random access memory
  • ROM read only memory
  • EPROM or flash memory erasable programmable read only memory
  • CD-ROM compact disk read-only memory
  • magnetic storage devices or any suitable combination of the foregoing.
  • the systems and techniques described herein can be implemented on a computer having a display device (e.g., a CRT (cathode ray tube) or LCD (liquid crystal display) monitor) for displaying information to the user. ); and a keyboard and pointing device (eg, a mouse or a trackball) through which a user can provide input to the computer.
  • a display device e.g., a CRT (cathode ray tube) or LCD (liquid crystal display) monitor
  • a keyboard and pointing device eg, a mouse or a trackball
  • Other kinds of devices can also be used to provide interaction with the user; for example, the feedback provided to the user can be any form of sensory feedback (e.g., visual feedback, auditory feedback, or tactile feedback); and can be in any form (including Acoustic input, speech input or, tactile input) to receive input from the user.
  • the systems and techniques described herein can be implemented in a computing system that includes back-end components (e.g., as a data server), or a computing system that includes middleware components (e.g., an application server), or a computing system that includes front-end components (e.g., as a a user computer having a graphical user interface or web browser through which a user can interact with embodiments of the systems and techniques described herein), or including such backend components, middleware components, Or any combination of front-end components in a computing system.
  • the components of the system can be interconnected by any form or medium of digital data communication, eg, a communication network. Examples of communication networks include: Local Area Network (LAN), Wide Area Network (WAN) and the Internet.
  • a computer system may include clients and servers.
  • Clients and servers are generally remote from each other and typically interact through a communication network.
  • the relationship of client and server arises by computer programs running on the respective computers and having a client-server relationship to each other.
  • the server can be a cloud server, also known as a cloud computing server or cloud host, which is a host product in the cloud computing service system to solve the problem of traditional physical host and VPS service ("Virtual Private Server", or "VPS”) Among them, there are defects such as difficult management and weak business scalability.
  • the server can also be a server of a distributed system, or a server combined with a blockchain.
  • steps may be reordered, added or deleted using the various forms of flow shown above.
  • each step described in the present disclosure may be executed in parallel, sequentially, or in a different order, as long as the desired result of the technical solution of the present disclosure can be achieved, no limitation is imposed herein.

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Abstract

The present disclosure relates to the technical field of computer vision, and provides an image acquisition system, a three-dimensional reconstruction method and apparatus, a device and a storage medium. A specific implementation solution is as follows: acquiring a first image set of a target object, wherein the first image set is collected by means of an image acquisition system when a plurality of supplementary light devices emit supplementary light patterns, any two first images in the first image set have an overlapping region, and each first image comprises part or all of a preset pattern; extracting feature points of each first image in the first image set; according to the feature points of each first image, performing feature point matching on at least two first images which have an overlapping region to obtain a matching feature point set; and performing three-dimensional reconstruction on the target object on the basis of the matching feature point set to obtain a three-dimensional reconstruction model. According to the present implementation solution, the success rate for three-dimensionally reconstructing objects which lack texture may be increased.

Description

图像采集系统、三维重建方法、装置、设备以及存储介质Image acquisition system, three-dimensional reconstruction method, device, equipment and storage medium
交叉引用cross reference
本专利申请要求于2021年07月23日提交的、申请号为202110836891.4、发明名称为“图像采集系统、三维重建方法、装置、设备以及存储介质”的中国专利申请的优先权,该申请的全文以引用的方式并入本申请中。This patent application claims the priority of the Chinese patent application with the application number 202110836891.4 and the title of the invention "image acquisition system, three-dimensional reconstruction method, device, equipment and storage medium" submitted on July 23, 2021. The full text of the application Incorporated into this application by reference.
技术领域technical field
本公开涉及计算机技术领域,具体涉及计算机视觉技术领域,尤其涉及图像采集系统、三维重建方法、装置、设备以及存储介质。The present disclosure relates to the field of computer technology, in particular to the field of computer vision technology, and in particular to an image acquisition system, a three-dimensional reconstruction method, device, equipment, and storage medium.
背景技术Background technique
三维建模是计算机图形学和计算机视觉的一个重要研究领域。其目标是高质量地捕捉物体和场景的三维形状和外观,以模拟数字空间中的三维交互和感知。3D modeling is an important research field in computer graphics and computer vision. Its goal is to capture the 3D shape and appearance of objects and scenes with high quality to simulate 3D interaction and perception in digital spaces.
发明内容Contents of the invention
本公开提供了一种图像采集系统、三维重建方法、装置、设备以及存储介质。The disclosure provides an image acquisition system, a three-dimensional reconstruction method, a device, a device, and a storage medium.
根据第一方面,提供了一种图像采集系统,包括:拍摄台;设置在拍摄台四周的多个补光设备,多个补光设备与拍摄台的相对位置固定,多个补光设备与第一控制器连接,被配置为在接收到第一控制器发送的补光指令时同时发出补光图案,对固定在拍摄台上的目标物体进行补光;以及可围绕拍摄台转动的至少一个图像采集设备,至少一个图像采集设备与第二控制器连接,被配置为响应于第二控制器发送的采集指令,在预设的多个采集位置处对目标物体进行拍摄,以采集目标物体的图像。According to the first aspect, an image acquisition system is provided, including: a shooting platform; a plurality of supplementary light devices arranged around the shooting platform, the relative positions of the plurality of supplementary light devices and the shooting platform are fixed, and the plurality of supplementary light devices are connected to the first A controller is connected, and is configured to issue a supplementary light pattern at the same time when receiving the supplementary light instruction sent by the first controller, and perform supplementary light on the target object fixed on the shooting platform; and at least one image that can rotate around the shooting platform Acquisition device, at least one image acquisition device is connected to the second controller, and is configured to respond to the acquisition instruction sent by the second controller to photograph the target object at a plurality of preset acquisition positions, so as to acquire images of the target object .
根据第二方面,提供了一种三维重建方法,包括:获取目标物体的第一图像集合,第一图像集合通过如第一方面所描述的图像采集系统在多个补光设备发出补光图案时采集,第一图像集合中的任意两张第一图像存在重合区域,各第一图像包括预设图案的部分或全部;提取第一图像集合中各第一图像的特征点;根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集;基于匹配特征点集,对目标物体进行三维重建,得到三维重建模型。According to the second aspect, there is provided a three-dimensional reconstruction method, including: acquiring a first set of images of the target object, and the first set of images is sent through the image acquisition system as described in the first aspect when multiple supplementary light devices emit supplementary light patterns Acquisition, any two first images in the first image set have overlapping areas, and each first image includes part or all of the preset pattern; extracting feature points of each first image in the first image set; according to each first image performing feature point matching on at least two first images with overlapping regions to obtain a matching feature point set; based on the matching feature point set, performing 3D reconstruction on the target object to obtain a 3D reconstruction model.
根据第三方面,提供了一种三维重建装置,包括:第一图像获取单元,被配置成获取目标物体的第一图像集合,第一图像集合通过如第一方面所描述的图像采集系统在多个补光设备发出补光图案时采集,第一图像集合中的任意两张第一图像存在重合区域,各第一图像包括预设图案的部分或全部;特征点提取单元,被配置成提取第一图像集合中各第一图像的特征点;特征点匹配单元,被配置成根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集;三维重建单元,被配置成基于匹配特征点集,对目标物体进行三维重建,得到三维重建模型。According to a third aspect, there is provided a three-dimensional reconstruction device, including: a first image acquisition unit configured to acquire a first set of images of a target object, and the first set of images is multi-purpose through the image acquisition system described in the first aspect. Collecting when a supplementary light device emits a supplementary light pattern, any two first images in the first image set have overlapping areas, and each first image includes part or all of the preset pattern; the feature point extraction unit is configured to extract the first image. The feature points of each first image in an image set; the feature point matching unit is configured to perform feature point matching on at least two first images with overlapping regions according to the feature points of each first image, to obtain a matching feature point set The 3D reconstruction unit is configured to perform 3D reconstruction on the target object based on the matching feature point set to obtain a 3D reconstruction model.
根据第四方面,提供了一种电子设备,包括:至少一个处理器;以及与上述至少一个处理器通信连接的存储器;其中,存储器存储有可被至少一个处理器执行的指令,上述指令被至少一个处理器执行,以使至少一个处理器能够执行如第二方面所描述的三维重建方法。According to a fourth aspect, there is provided an electronic device, comprising: at least one processor; and a memory communicatively connected to the at least one processor; wherein, the memory stores instructions executable by the at least one processor, and the instructions are executed by at least one processor. Executed by a processor, so that at least one processor can execute the three-dimensional reconstruction method described in the second aspect.
根据第五方面,提供了一种存储有计算机指令的非瞬时计算机可读存储介质,上述计算机指令用于使计算机执行如第二方面所描述的三维重建方法。According to a fifth aspect, there is provided a non-transitory computer-readable storage medium storing computer instructions, the computer instructions are used to make a computer execute the three-dimensional reconstruction method as described in the second aspect.
根据第六方面,一种计算机程序产品,包括计算机程序,上述计算机程序在被处理器执行时实现如第二方面所描述的三维重建方法。According to a sixth aspect, a computer program product includes a computer program, and when the computer program is executed by a processor, the three-dimensional reconstruction method as described in the second aspect is implemented.
根据本公开的技术通过引入灯光纹理,利用图像采集系统采集合规图像,从而能够优化三维重建过程,在较低的成本下可以对缺乏表面纹理特征的物体进行有效三维重建。According to the technology of the present disclosure, by introducing light textures and using an image acquisition system to acquire compliant images, the three-dimensional reconstruction process can be optimized, and objects lacking surface texture features can be effectively reconstructed in three dimensions at a relatively low cost.
应当理解,本部分所描述的内容并非旨在标识本公开的实施例的 关键或重要特征,也不用于限制本公开的范围。本公开的其它特征将通过以下的说明书而变得容易理解。It should be understood that what is described in this section is not intended to identify key or important features of the embodiments of the present disclosure, nor is it intended to limit the scope of the present disclosure. Other features of the present disclosure will be readily understood through the following description.
附图说明Description of drawings
附图用于更好地理解本方案,不构成对本公开的限定。其中:The accompanying drawings are used to better understand the present solution, and do not constitute a limitation to the present disclosure. in:
图1是本公开的一个实施例可以应用于其中的示例性系统架构图;FIG. 1 is an exemplary system architecture diagram to which an embodiment of the present disclosure can be applied;
图2a示出了根据本公开的图像采集系统的俯视图;Figure 2a shows a top view of an image acquisition system according to the present disclosure;
图2b示出了根据本公开的图像采集系统的立体示意图;Fig. 2b shows a schematic perspective view of an image acquisition system according to the present disclosure;
图3是根据本公开的三维重建方法的一个实施例的流程图;FIG. 3 is a flowchart of an embodiment of a three-dimensional reconstruction method according to the present disclosure;
图4是根据本公开的三维重建方法的另一个实施例的流程图;FIG. 4 is a flowchart of another embodiment of a three-dimensional reconstruction method according to the present disclosure;
图5是目标物体、重建失败以及根据本公开的三维重建方法重建成功的对比图;FIG. 5 is a comparison diagram of a target object, a reconstruction failure, and a successful reconstruction according to the three-dimensional reconstruction method of the present disclosure;
图6是根据本公开的三维重建装置的一个实施例的结构示意图;Fig. 6 is a schematic structural diagram of an embodiment of a three-dimensional reconstruction device according to the present disclosure;
图7是用来实现本公开实施例的三维重建方法的电子设备的框图。FIG. 7 is a block diagram of an electronic device for implementing the three-dimensional reconstruction method of the embodiment of the present disclosure.
具体实施方式detailed description
以下结合附图对本公开的示范性实施例做出说明,其中包括本公开实施例的各种细节以助于理解,应当将它们认为仅仅是示范性的。因此,本领域普通技术人员应当认识到,可以对这里描述的实施例做出各种改变和修改,而不会背离本公开的范围和精神。同样,为了清楚和简明,以下的描述中省略了对公知功能和结构的描述。Exemplary embodiments of the present disclosure are described below in conjunction with the accompanying drawings, which include various details of the embodiments of the present disclosure to facilitate understanding, and they should be regarded as exemplary only. Accordingly, those of ordinary skill in the art will recognize that various changes and modifications of the embodiments described herein can be made without departing from the scope and spirit of the disclosure. Also, descriptions of well-known functions and constructions are omitted in the following description for clarity and conciseness.
需要说明的是,在不冲突的情况下,本公开中的实施例及实施例中的特征可以相互组合。下面将参考附图并结合实施例来详细说明本公开。It should be noted that, in the case of no conflict, the embodiments in the present disclosure and the features in the embodiments can be combined with each other. The present disclosure will be described in detail below with reference to the accompanying drawings and embodiments.
图1示出了可以应用本公开的图像采集系统、三维重建方法或三维重建装置的实施例的示例性系统架构100。FIG. 1 shows an exemplary system architecture 100 to which embodiments of the image acquisition system, three-dimensional reconstruction method or three-dimensional reconstruction apparatus of the present disclosure can be applied.
如图1所示,系统架构100可以包括图像采集系统101,网络102和终端设备103。网络102用以在图像采集系统101和终端设备103之间提供通信链路的介质。网络102可以包括各种连接类型,例如有线、无线通信链路或者光纤电缆等等。As shown in FIG. 1 , a system architecture 100 may include an image acquisition system 101 , a network 102 and a terminal device 103 . The network 102 is used as a medium for providing a communication link between the image acquisition system 101 and the terminal device 103 . Network 102 may include various connection types, such as wires, wireless communication links, or fiber optic cables, among others.
图像采集系统101可以是用于采集目标物体的图像的系统,其中包括多个硬件。多个硬件配合,用于采集合规的图像。图像采集系统101可以通过网络102将采集的多张图像发送给终端设备103。The image acquisition system 101 may be a system for acquiring images of a target object, which includes a plurality of hardware. Multiple pieces of hardware work together to capture compliant images. The image collection system 101 can send the multiple collected images to the terminal device 103 through the network 102 .
终端设备103可以对接收到的多张图像进行处理,以进行三维重建,得到三维重建模型。终端设备103上可以安装有各种通讯客户端应用,例如图像处理类应用等。用户可以通过终端设备103的显示屏来查看上述三维重建模型。The terminal device 103 may process the multiple received images to perform 3D reconstruction to obtain a 3D reconstruction model. Various communication client applications, such as image processing applications, can be installed on the terminal device 103 . The user can view the above three-dimensional reconstruction model through the display screen of the terminal device 103 .
终端设备103可以是硬件,也可以是软件。当终端设备103为硬件时,可以是各种电子设备,包括但不限于智能手机、平板电脑、电子书阅读器、车载电脑、膝上型便携计算机和台式计算机等等。当终端设备103为软件时,可以安装在上述所列举的电子设备中。其可以实现成多个软件或软件模块(例如用来提供分布式服务),也可以实现成单个软件或软件模块。在此不做具体限定。The terminal device 103 may be hardware or software. When the terminal device 103 is hardware, it may be various electronic devices, including but not limited to smartphones, tablet computers, e-book readers, vehicle-mounted computers, laptop computers, desktop computers, and the like. When the terminal device 103 is software, it can be installed in the electronic devices listed above. It can be implemented as a plurality of software or software modules (for example, to provide distributed services), or as a single software or software module. No specific limitation is made here.
需要说明的是,本公开实施例所提供的三维重建方法一般由终端设备103执行。相应地,三维重建装置一般设置于终端设备103中。It should be noted that the three-dimensional reconstruction method provided by the embodiment of the present disclosure is generally executed by the terminal device 103 . Correspondingly, the three-dimensional reconstruction apparatus is generally set in the terminal device 103 .
应该理解,图1中的终端设备、网络和服务器的数目仅仅是示意性的。根据实现需要,可以具有任意数目的终端设备、网络和服务器。It should be understood that the numbers of terminal devices, networks and servers in Fig. 1 are only illustrative. According to the implementation needs, there can be any number of terminal devices, networks and servers.
参见图2a和图2b,图2a示出了根据本公开的图像采集系统的俯视图,图2b示出了根据本公开的图像采集系统的立体示意图。如图2a和图2b所示,本实施例中,图像采集系统可以包括多个补光设备201、拍摄台202以及至少一个图像采集设备203。Referring to FIG. 2a and FIG. 2b, FIG. 2a shows a top view of the image acquisition system according to the present disclosure, and FIG. 2b shows a perspective view of the image acquisition system according to the present disclosure. As shown in FIG. 2 a and FIG. 2 b , in this embodiment, the image acquisition system may include a plurality of supplementary light devices 201 , a photographing stage 202 and at least one image acquisition device 203 .
其中,多个补光设备201设置在拍摄台202的四周,且与拍摄台202的相对位置固定。具体的,多个补光设备201和拍摄台202可以通过同一固定装置固定,从而使得多个补光设备201和拍摄台202之间的相对位置固定不变。Wherein, a plurality of supplementary light devices 201 are arranged around the shooting platform 202 , and their relative positions to the shooting platform 202 are fixed. Specifically, the plurality of supplementary light devices 201 and the photographing stage 202 can be fixed by the same fixing device, so that the relative positions between the plurality of supplementary light devices 201 and the photographing stage 202 are fixed.
至少一个图像采集设备203可围绕拍摄台202转动。具体的,至少一个图像采集设备203可以通过可转动连接件与拍摄台202固定连接。或者,拍摄台202可以通过可转动连接件与至少一个图像采集设备203固定连接。可以通过转动拍摄台202实现至少一个图像采集设备203和拍摄台202之间的相对转动,也可以通过转动至少一个图像 采集设备203实现至少一个图像采集设备203和拍摄台202之间的相对转动。At least one image capture device 203 can rotate around the shooting platform 202 . Specifically, at least one image acquisition device 203 may be fixedly connected to the photographing platform 202 through a rotatable connection. Alternatively, the photographing platform 202 may be fixedly connected to at least one image acquisition device 203 through a rotatable connection. The relative rotation between at least one image capture device 203 and the capture platform 202 can be realized by rotating the capture platform 202, and the relative rotation between at least one image capture device 203 and the capture platform 202 can also be realized by rotating the at least one image capture device 203.
多个补光设备201可以与第一控制器(图中未示出)连接。第一控制器可以向多个补光设备201发送补光指令。多个补光设备201在接收到第一控制器发送的补光指令之时或之后可以同时发出补光图案,实现对固定在拍摄台上的目标物体进行补光。多个补光设备201可以发出预设图案,或者发出激光光斑。Multiple supplementary light devices 201 can be connected with the first controller (not shown in the figure). The first controller may send supplementary light instructions to multiple supplementary light devices 201 . The plurality of supplementary light devices 201 can send supplementary light patterns at the same time when or after receiving the supplementary light instruction sent by the first controller, so as to implement supplementary light for the target object fixed on the shooting stage. Multiple supplementary light devices 201 can emit preset patterns, or emit laser spots.
至少一个图像采集设备203可以与第二控制器(图中未示出)连接。第二控制器可以向至少一个图像采集设备203发送采集指令。至少一个图像采集设备203在接收到第二控制器发送的采集指令之时或之后,可以在预设的多个采集位置处对固定在拍摄台上的目标物体进行拍摄,以采集目标物体的图像。At least one image acquisition device 203 may be connected to a second controller (not shown in the figure). The second controller may send an acquisition instruction to at least one image acquisition device 203 . At least one image acquisition device 203 can photograph the target object fixed on the shooting platform at multiple preset acquisition positions when or after receiving the acquisition instruction sent by the second controller, so as to acquire the image of the target object .
本公开的上述实施例提供的图像采集系统,可以通过补光设备向固定在拍摄台上的目标物体补光,从而为缺乏表面纹理特征的物体提供灯光纹理,提高三维重建的效率和准确率。The image acquisition system provided by the above-mentioned embodiments of the present disclosure can supplement light to a target object fixed on a shooting platform through a light supplement device, thereby providing light texture for objects lacking surface texture features, and improving the efficiency and accuracy of 3D reconstruction.
在本实施例的一些可选的实现方式中,上述多个补光设备201中相邻的两个补光设备的补光范围之间具有重合区域。In some optional implementation manners of this embodiment, there is an overlapping area between the supplementary light ranges of two adjacent supplementary light devices among the plurality of supplementary light devices 201 .
本实现方式中,图像采集系统可以包括四个补光设备。上述四个补光设备可以分布在拍摄台周围的一个圆形轨道上。其中,相邻的两个补光设备的补光范围有重合。这样,更方便对相邻的两个补光设备交界处采集的图像进行特征点匹配以及三维重建。In this implementation manner, the image acquisition system may include four supplementary light devices. The above four supplementary light devices can be distributed on a circular track around the shooting platform. Wherein, the supplementary light ranges of two adjacent supplementary light devices overlap. In this way, it is more convenient to perform feature point matching and three-dimensional reconstruction on images collected at the junction of two adjacent supplementary light devices.
在本实施例的一些可选的实现方式中,上述多个补光设备201可以均匀地设置于拍摄台202的四周,且多个补光设备201发出的补光图案覆盖目标物体的全表面。In some optional implementations of this embodiment, the above-mentioned multiple supplementary light devices 201 may be evenly arranged around the shooting platform 202, and the supplementary light patterns emitted by the multiple supplementary light devices 201 cover the entire surface of the target object.
本实现方式中,多个补光设备201可以均匀地设置于拍摄台202的四周。如果多个补光设备201分布在拍摄台周围的一个圆形轨道上,则相邻的两个补光设备间的圆心角相同。并且,为了保证目标物体三维重建的完整度,需使多个补光设备201发出的补光图案覆盖目标物体的全表面。In this implementation manner, a plurality of supplementary light devices 201 may be uniformly arranged around the shooting platform 202 . If multiple supplementary light devices 201 are distributed on a circular track around the shooting platform, the central angles between two adjacent supplementary light devices are the same. Moreover, in order to ensure the integrity of the three-dimensional reconstruction of the target object, it is necessary to make the supplementary light patterns emitted by the plurality of supplementary light devices 201 cover the entire surface of the target object.
在本实施例的一些可选的实现方式中,上述预设的多个采集位置 包括多个采集位置集合,每个采集位置集合中的采集位置位于同一圆形轨道上。In some optional implementations of this embodiment, the above preset multiple collection positions include multiple collection position sets, and the collection positions in each collection position set are located on the same circular orbit.
本实现方式中,可以将预设的多个采集位置划分为多个采集位置集合。每个采集位置集合中的多个采集位置位于同一圆形轨道上。不同圆形轨道分布与目标物体的相对高度不同。通过这些设置在不同高度不同角度的采集位置,可以实现目标物体全表面图像的采集。In this implementation manner, the preset multiple collection locations may be divided into multiple collection location sets. Multiple collection locations in each collection location set are located on the same circular orbit. The distribution of different circular orbits differs from the relative height of the target object. By setting these collection positions at different heights and different angles, the collection of images of the entire surface of the target object can be realized.
在本实施例的一些可选的实现方式中,每个采集位置集合中相邻的两个采集位置之间的圆心角处于预设角度范围内。In some optional implementation manners of this embodiment, a central angle between two adjacent collection positions in each collection position set is within a preset angle range.
本实现方式中,为了保证相邻两个采集位置的图像之间具有一定的重合度,可以使单个采集位置集合中相邻的两个采集位置之间的圆心角处于预设角度范围内。可以理解的是,如果相邻两个采集位置之间的圆心角较大,则相邻两个采集位置的图像之间的重合度较小,使得目标物体的三维重建的效果较差。如果相邻两个采集位置之间的圆心角较小,则会导致相邻两个采集位置的图像之间的重合度较大,使得计算量大大增加。因此,本实现方式中可以将两个采集位置之间的圆心角设置在预设角度范围内,从而能够保证采集图像的数量的合理性,同时也能够保证三维重建效果的准确性。In this implementation manner, in order to ensure a certain degree of overlap between images of two adjacent collection locations, the central angle between two adjacent collection locations in a single collection location set may be within a preset angle range. It can be understood that if the central angle between two adjacent collection positions is relatively large, the coincidence degree between the images of the two adjacent collection positions is small, making the effect of three-dimensional reconstruction of the target object poor. If the central angle between two adjacent collection positions is small, the coincidence degree between the images of the two adjacent collection positions will be relatively large, which greatly increases the amount of calculation. Therefore, in this implementation manner, the central angle between the two acquisition positions can be set within a preset angle range, thereby ensuring the rationality of the number of acquired images and the accuracy of the three-dimensional reconstruction effect.
在本实施例的一些可选的实现方式中,拍摄台202以及多个补光设备201可以同步旋转。In some optional implementation manners of this embodiment, the photographing table 202 and the plurality of supplementary light devices 201 may rotate synchronously.
本实现方式中,为了充分采集固定在拍摄台202上的目标物体各角度的图像,可以改变拍摄台与各图像采集设备之间的相对位置。具体的,可以通过固定各图像采集设备的位置,转动拍摄台和多个补光设备来实现相对位置的改变。也可以通过固定拍摄台和多个补光设备的位置,转动各图像采集设备来实现相对位置的改变。In this implementation manner, in order to fully capture images from various angles of the target object fixed on the shooting platform 202, the relative positions between the shooting platform and each image acquisition device may be changed. Specifically, the change of the relative position can be realized by fixing the position of each image acquisition device and rotating the photographing table and multiple supplementary light devices. It is also possible to change the relative positions by fixing the positions of the shooting table and multiple supplementary light devices, and rotating each image acquisition device.
在本实施例的一些可选的实现方式中,上述多个补光设备201发出的补光图案的颜色可切换。In some optional implementation manners of this embodiment, the colors of the supplementary light patterns emitted by the above-mentioned plurality of supplementary light devices 201 can be switched.
本实现方式中,多个补光设备可以发出多种颜色的可见光。执行主体可以根据目标物体表面的颜色,设置补光图案的颜色。使得补光图像的颜色与目标物体表面的颜色具有较高的对比度,从而方便进行特征点的提取,进而方便进行三维重建。In this implementation manner, multiple supplementary light devices can emit visible light of various colors. The executive body can set the color of the supplementary light pattern according to the color of the surface of the target object. The color of the supplementary light image and the color of the surface of the target object have a higher contrast, thereby facilitating the extraction of feature points and further facilitating the three-dimensional reconstruction.
在本实施例的一些可选的实现方式中,多个补光设备201发出的补光图案未照射到至少一个图像采集设备203的光学镜头。In some optional implementation manners of this embodiment, the supplementary light patterns emitted by the plurality of supplementary light devices 201 do not illuminate the optical lens of at least one image acquisition device 203 .
本实现方式中,为了避免多个补光设备201发出的补光图案照射到各图像采集设备203的光学镜头,引起采集的图像的质量下降,需要使多个补光设备201发出的补光图案不能照射到各图像采集设备203的光学镜头。In this implementation, in order to prevent the supplementary light patterns emitted by multiple supplementary light devices 201 from irradiating the optical lens of each image acquisition device 203, causing the quality of the captured image to decline, it is necessary to make the supplementary light patterns issued by multiple supplementary light devices 201 The optical lens of each image capture device 203 cannot be irradiated.
在本实施例的一些可选的实现方式中,各图像采集设备在采集目标物体的图像时,可以适当地调整图像采集设备的角度,使得目标物体能够始终保持在相机视野的中心位置,这样可以减少由于图像边缘的畸变对三维重建造成的误差。In some optional implementations of this embodiment, each image acquisition device can properly adjust the angle of the image acquisition device when acquiring an image of a target object, so that the target object can always be kept at the center of the camera field of view, which can Reduce the error caused by the distortion of the image edge to the 3D reconstruction.
继续参见图3,其示出了根据本公开的三维重建方法的一个实施例的流程300。如图3所示,本实施例的方法可以包括以下步骤:Continue referring to FIG. 3 , which shows a flow 300 of an embodiment of the three-dimensional reconstruction method according to the present disclosure. As shown in Figure 3, the method of this embodiment may include the following steps:
步骤301,获取目标物体的第一图像集合。 Step 301, acquire a first set of images of a target object.
本实施例中,三维重建方法的执行主体(例如图1所示的终端设备103)可以首先获取目标物体的第一图像集合。这里,第一图像集合可以是通过图2a和图2b的实施例中所描述的图像采集系统在多个补光设备开启补光向目标物体照射补光图案时所采集的。第一图像集合中的至少两张第一图像存在重合区域。并且,各第一图像中包括预设图案的部分或全部。In this embodiment, the execution subject of the three-dimensional reconstruction method (for example, the terminal device 103 shown in FIG. 1 ) may first acquire the first image set of the target object. Here, the first set of images may be collected by the image acquisition system described in the embodiment of FIG. 2a and FIG. 2b when multiple supplementary light devices turn on the supplementary light to irradiate the supplementary light pattern to the target object. At least two first images in the first image set have overlapping areas. Moreover, each first image includes part or all of the preset pattern.
步骤302,提取第一图像集合中各第一图像的特征点。 Step 302, extract feature points of each first image in the first image set.
执行主体在得到第一图像集合后,可以对第一图像集合中各第一图像进行特征点提取。这里,特征点可以是边缘点和角点等具有特殊特征的点。具体的,执行主体可以利用现有的特征点提取算法提取特征点,例如SRUF(Speeded Up Robust Features,加速稳健特征)、SIFT(Scale-invariant feature transform,尺度不变特征变换)、AKAZE(KAZE的加速版本)、深度学习网络等。After obtaining the first image set, the execution subject may perform feature point extraction on each first image in the first image set. Here, the feature points may be points with special characteristics such as edge points and corner points. Specifically, the executive body can use existing feature point extraction algorithms to extract feature points, such as SRUF (Speeded Up Robust Features, accelerated robust features), SIFT (Scale-invariant feature transform, scale-invariant feature transform), AKAZE (KAZE's Accelerated version), deep learning network, etc.
步骤303,根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集。 Step 303, according to the feature points of each first image, perform feature point matching on at least two first images with overlapping areas, to obtain a matching feature point set.
执行主体在得到各第一图像的特征点后,可以对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配的特征点。这些匹配的 特征点用于确定存在重合区域的至少两张第一图像之间的关系,方便用于候选的网格重建。在进行特征点匹配时,执行主体可以采用但不限于ANN(approximate nearest neighbor,近似最近邻搜索)、Optical Flow等方法进行匹配。After obtaining the feature points of each first image, the execution subject may perform feature point matching on at least two first images with overlapping areas to obtain matched feature points. These matched feature points are used to determine the relationship between at least two first images with overlapping regions, which is convenient for candidate grid reconstruction. When performing feature point matching, the execution subject can use but not limited to ANN (approximate nearest neighbor, approximate nearest neighbor search), Optical Flow and other methods for matching.
步骤304,基于匹配特征点集,对目标物体进行三维重建,得到三维重建模型。 Step 304, based on the matching feature point set, perform 3D reconstruction on the target object to obtain a 3D reconstruction model.
在得到匹配特征点集后,执行主体可以利用上述匹配特征点集进行三维重建。具体的,执行主体可以确定匹配特征点集中各特征点的三维坐标,根据各三维坐标进行三维重建,得到三维重建模型。After obtaining the set of matching feature points, the execution subject can use the set of matching feature points to perform 3D reconstruction. Specifically, the execution subject may determine the three-dimensional coordinates of each feature point in the matching feature point set, perform three-dimensional reconstruction according to each three-dimensional coordinate, and obtain a three-dimensional reconstruction model.
本公开的上述实施例提供的三维重建方法,通过引入灯光纹理,将软硬件进行结合,优化三维重建过程,在较低的成本下可以对缺乏表面纹理特征的物体进行有效三维重建,能够显著扩展基于图像三维重建算法的应用范围。The 3D reconstruction method provided by the above-mentioned embodiments of the present disclosure, by introducing light textures, combining software and hardware, and optimizing the 3D reconstruction process, can perform effective 3D reconstruction on objects lacking surface texture features at a relatively low cost, and can significantly expand The scope of application of image-based 3D reconstruction algorithms.
继续参见图4,其示出了根据本公开的三维重建方法的另一个实施例的流程400。如图4所示,本实施例的方法可以包括以下步骤:Continue to refer to FIG. 4 , which shows a flow 400 of another embodiment of the three-dimensional reconstruction method according to the present disclosure. As shown in Figure 4, the method of this embodiment may include the following steps:
步骤401,获取目标物体的第一图像集合和第二图像集合。 Step 401, acquire a first image set and a second image set of a target object.
本实施例中,上述第一图像集合和第二图像集合可以通过图2a和图2b的实施例所描述的图像采集系统采集得到。其中,第一图像集合中的各第一图像与第二图像集合中的各第二图像一一对应。对应的第一图像和第二图像在同一采集位置采集。且第一图像是在补光设备发出补光图案时采集,而第二图像是在补光设备未发出补光图案时采集。In this embodiment, the above-mentioned first image set and second image set can be acquired by the image acquisition system described in the embodiment of Fig. 2a and Fig. 2b. Wherein, each first image in the first image set is in one-to-one correspondence with each second image in the second image set. The corresponding first and second images are captured at the same capture location. And the first image is collected when the supplementary light device emits the supplementary light pattern, and the second image is collected when the supplementary light device does not emit the supplementary light pattern.
步骤402,提取第一图像集合中各第一图像的特征点。 Step 402, extract feature points of each first image in the first image set.
步骤403,根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集。 Step 403, according to the feature points of each first image, perform feature point matching on at least two first images with overlapping areas to obtain a matching feature point set.
步骤404,确定匹配特征点集中各匹配特征点的三维坐标以及各第一图像的相机位姿。 Step 404, determining the three-dimensional coordinates of each matching feature point in the matching feature point set and the camera pose of each first image.
本实施例中,执行主体可以在得到匹配特征点集后,确定匹配特征点集中各匹配特征点的三维坐标。具体的,执行主体可以首先确定特征点在图像坐标系中的坐标,然后结合图像坐标系与世界坐标系之间的转换关系,将图像坐标系中的二维坐标,转换成世界坐标系中的 三维坐标。同时执行主体还可以根据各图像采集设备的位置和角度,以及图像采集设备的内参和外参,确定各第一图像的相机位姿。In this embodiment, the execution subject may determine the three-dimensional coordinates of each matching feature point in the matching feature point set after obtaining the matching feature point set. Specifically, the execution subject can first determine the coordinates of the feature points in the image coordinate system, and then combine the conversion relationship between the image coordinate system and the world coordinate system to convert the two-dimensional coordinates in the image coordinate system into the coordinates in the world coordinate system. 3D coordinates. At the same time, the execution subject can also determine the camera pose of each first image according to the position and angle of each image acquisition device, and the internal parameters and external parameters of the image acquisition device.
步骤405,根据各匹配特征点的三维坐标以及各第一图像的相机位姿,计算稠密点云。 Step 405, calculate a dense point cloud according to the three-dimensional coordinates of each matching feature point and the camera pose of each first image.
执行主体可以在确定各匹配特征点的三维坐标后,可以将其作为稀疏点云。结合各第一图像的相机位姿,可以确定出其中第一图像中各像素点的三维坐标,得到稠密点云。具体的,在计算稠密点云时,执行主体可以利用但不限于CMVS(Clustering Multi-View Stereo,多视图簇聚)、PMVS(Patch-based Multi-View Stereo,基于面片的多视图簇聚)、深度学习(MVS-Net等)算法。After the execution subject determines the three-dimensional coordinates of each matching feature point, it can be used as a sparse point cloud. Combining the camera poses of each first image, the three-dimensional coordinates of each pixel in the first image can be determined to obtain a dense point cloud. Specifically, when calculating dense point clouds, the execution subject can use but not limited to CMVS (Clustering Multi-View Stereo, multi-view clustering), PMVS (Patch-based Multi-View Stereo, multi-view clustering based on patches) , Deep learning (MVS-Net, etc.) algorithm.
步骤406,根据稠密点云进行表面网格重建,确定三维重建模型。 Step 406, perform surface mesh reconstruction according to the dense point cloud, and determine a 3D reconstruction model.
通过上述稠密点云可以进行表面网格重建。具体的,执行主体可以根据稠密点云中各点的三维坐标,构建三角面片,将各三角面片连接,从而能够得到三维重建模型。执行主体还可以利用Poisson重建算法等进行三维重建。Surface mesh reconstruction can be performed through the above dense point cloud. Specifically, the execution subject can construct triangular patches according to the 3D coordinates of each point in the dense point cloud, and connect the triangular patches to obtain a 3D reconstruction model. The executive body can also use the Poisson reconstruction algorithm to perform three-dimensional reconstruction.
步骤407,根据第二图像集合,确定纹理图像。 Step 407, determine a texture image according to the second image set.
本实施例中,执行主体还可以根据第二图像集合,确定纹理图像。具体的,执行主体可以利用深度学习算法等确定纹理图像。In this embodiment, the execution subject may also determine the texture image according to the second image set. Specifically, the execution subject may use a deep learning algorithm to determine the texture image.
步骤408,将纹理图像融合到三维重建模型。 Step 408, fusing the texture image into the 3D reconstruction model.
最后,执行主体可以将纹理图像融合到三维重建模型。在融合时,可以根据纹理图像中各像素点对应的位置向三维重建模型进行融合。Finally, the executive body can fuse the texture image to the 3D reconstructed model. When merging, the 3D reconstruction model can be fused according to the position corresponding to each pixel in the texture image.
本公开的上述实施例提供的三维重建方法,可以提高缺乏纹理的物体的重建效果。The three-dimensional reconstruction method provided by the above-mentioned embodiments of the present disclosure can improve the reconstruction effect of an object lacking texture.
图5示出了目标物体的图像、重建失败的图像以及利用本实施例的三维重建方法进行三维重建得到的结果。通过对比可知,本实施例的三维重建方法有效地提高了缺乏纹理的物体的三维重建成功率。FIG. 5 shows images of target objects, images of failed reconstructions, and results of 3D reconstruction using the 3D reconstruction method of this embodiment. It can be seen from the comparison that the 3D reconstruction method of this embodiment effectively improves the success rate of 3D reconstruction of objects lacking in texture.
进一步参考图6,作为对上述各图所示方法的实现,本公开提供了一种三维重建装置的一个实施例,该装置实施例与图2a和图2b所示的方法实施例相对应,该装置具体可以应用于各种电子设备中。Further referring to FIG. 6, as an implementation of the methods shown in the above figures, the present disclosure provides an embodiment of a three-dimensional reconstruction device, which corresponds to the method embodiments shown in FIG. 2a and FIG. 2b. The device can be specifically applied to various electronic devices.
如图6所示,本实施例的三维重建装置600包括:第一图像获取 单元601、特征点提取单元602、特征点匹配单元603和三维重建单元604。As shown in FIG. 6 , the 3D reconstruction device 600 of this embodiment includes: a first image acquisition unit 601 , a feature point extraction unit 602 , a feature point matching unit 603 and a 3D reconstruction unit 604 .
第一图像获取单元601,被配置成获取目标物体的第一图像集合。第一图像集合通过图2a和图2b的实施例所描述的图像采集系统在多个补光设备发出补光图案时采集,第一图像集合中的任意两张第一图像存在重合区域,各第一图像包括预设图案的部分或全部。The first image acquiring unit 601 is configured to acquire a first image set of a target object. The first image set is collected by the image acquisition system described in the embodiment of Fig. 2a and Fig. 2b when a plurality of supplementary light devices emit supplementary light patterns, any two first images in the first image set have overlapping areas, and each second An image includes part or all of the preset pattern.
特征点提取单元602,被配置成提取第一图像集合中各第一图像的特征点。The feature point extraction unit 602 is configured to extract feature points of each first image in the first image set.
特征点匹配单元603,被配置成根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集。The feature point matching unit 603 is configured to perform feature point matching on at least two first images with overlapping regions according to the feature points of each first image, to obtain a matching feature point set.
三维重建单元604,被配置成基于匹配特征点集,对目标物体进行三维重建,得到三维重建模型。The 3D reconstruction unit 604 is configured to perform 3D reconstruction of the target object based on the matching feature point set to obtain a 3D reconstruction model.
在本实施例的一些可选的实现方式中,装置600还可以包括图6中未示出的:第二图像获取单元、纹理图像确定单元以及纹理图像融合单元。In some optional implementation manners of this embodiment, the apparatus 600 may further include not shown in FIG. 6 : a second image acquisition unit, a texture image determination unit, and a texture image fusion unit.
第二图像获取单元,被配置成获取第二图像集合,第二图像集合通过如图2a和图2b的实施例所描述的图像采集系统在多个补光设备未发出补光图案时采集。The second image acquisition unit is configured to acquire a second image set, and the second image set is acquired by the image acquisition system as described in the embodiment of Fig. 2a and Fig. 2b when the plurality of supplementary light devices do not emit supplementary light patterns.
纹理图像确定单元,被配置成根据第二图像集合,确定纹理图像。The texture image determining unit is configured to determine the texture image according to the second set of images.
纹理图像融合单元,被配置成将纹理图像融合到三维重建模型。The texture image fusion unit is configured to fuse the texture image into the three-dimensional reconstruction model.
在本实施例的一些可选的实现方式中,三维重建单元604可以进一步被配置成:确定匹配特征点集中各匹配特征点的三维坐标以及各第一图像的相机位姿;根据各匹配特征点的三维坐标以及各第一图像的相机位姿,计算稠密点云;根据稠密点云进行表面网格重建,确定三维重建模型。In some optional implementations of this embodiment, the 3D reconstruction unit 604 may be further configured to: determine the 3D coordinates of each matching feature point in the matching feature point set and the camera pose of each first image; The 3D coordinates of the first image and the camera pose of each first image are calculated to calculate the dense point cloud; the surface mesh is reconstructed according to the dense point cloud to determine the 3D reconstruction model.
应当理解,三维重建装置600中记载的单元601至单元604分别与参考图3描述的方法中的各个步骤相对应。由此,上文针对三维重建方法描述的操作和特征同样适用于装置600及其中包含的单元,在此不再赘述。It should be understood that the units 601 to 604 recorded in the three-dimensional reconstruction apparatus 600 respectively correspond to the steps in the method described with reference to FIG. 3 . Therefore, the operations and features described above for the three-dimensional reconstruction method are also applicable to the device 600 and the units contained therein, and will not be repeated here.
本公开的技术方案中,所涉及的用户个人信息的获取、存储和应 用等,均符合相关法律法规的规定,且不违背公序良俗。In the technical solution of this disclosure, the acquisition, storage and application of user personal information involved are in compliance with relevant laws and regulations, and do not violate public order and good customs.
根据本公开的实施例,本公开还提供了还提供了一种电子设备、一种可读存储介质和一种计算机程序产品。According to the embodiments of the present disclosure, the present disclosure also provides an electronic device, a readable storage medium, and a computer program product.
图7示出了根据本公开实施例的执行三维重建方法的电子设备700的框图。电子设备旨在表示各种形式的数字计算机,诸如,膝上型计算机、台式计算机、工作台、个人数字助理、服务器、刀片式服务器、大型计算机、和其它适合的计算机。电子设备还可以表示各种形式的移动装置,诸如,个人数字处理、蜂窝电话、智能电话、可穿戴设备和其它类似的计算装置。本文所示的部件、它们的连接和关系、以及它们的功能仅仅作为示例,并且不意在限制本文中描述的和/或者要求的本公开的实现。FIG. 7 shows a block diagram of an electronic device 700 for performing a three-dimensional reconstruction method according to an embodiment of the present disclosure. Electronic device is intended to represent various forms of digital computers, such as laptops, desktops, workstations, personal digital assistants, servers, blade servers, mainframes, and other suitable computers. Electronic devices may also represent various forms of mobile devices, such as personal digital processing, cellular telephones, smart phones, wearable devices, and other similar computing devices. The components shown herein, their connections and relationships, and their functions, are by way of example only, and are not intended to limit implementations of the disclosure described and/or claimed herein.
如图7所示,电子设备700包括处理器701,其可以根据存储在只读存储器(ROM)702中的计算机程序或者从存储器708加载到随机访问存储器(RAM)703中的计算机程序,来执行各种适当的动作和处理。在RAM 703中,还可存储电子设备700操作所需的各种程序和数据。处理器701、ROM 702以及RAM 703通过总线704彼此相连。I/O接口(输入/输出接口)705也连接至总线704。As shown in FIG. 7 , an electronic device 700 includes a processor 701 that can execute according to a computer program stored in a read-only memory (ROM) 702 or loaded from a memory 708 into a random access memory (RAM) 703. Various appropriate actions and treatments. In the RAM 703, various programs and data necessary for the operation of the electronic device 700 can also be stored. The processor 701, ROM 702, and RAM 703 are connected to each other through a bus 704. An I/O interface (input/output interface) 705 is also connected to the bus 704 .
电子设备700中的多个部件连接至I/O接口705,包括:输入单元706,例如键盘、鼠标等;输出单元707,例如各种类型的显示器、扬声器等;存储器708,例如磁盘、光盘等;以及通信单元709,例如网卡、调制解调器、无线通信收发机等。通信单元709允许电子设备700通过诸如因特网的计算机网络和/或各种电信网络与其他设备交换信息/数据。Multiple components in the electronic device 700 are connected to the I/O interface 705, including: an input unit 706, such as a keyboard, a mouse, etc.; an output unit 707, such as various types of displays, speakers, etc.; a memory 708, such as a magnetic disk, an optical disk, etc. ; and a communication unit 709, such as a network card, a modem, a wireless communication transceiver, and the like. The communication unit 709 allows the electronic device 700 to exchange information/data with other devices through a computer network such as the Internet and/or various telecommunication networks.
处理器701可以是各种具有处理和计算能力的通用和/或专用处理组件。处理器701的一些示例包括但不限于中央处理单元(CPU)、图形处理单元(GPU)、各种专用的人工智能(AI)计算芯片、各种运行机器学习模型算法的处理器、数字信号处理器(DSP)、以及任何适当的处理器、控制器、微控制器等。处理器701执行上文所描述的各个方法和处理,例如三维重建方法。例如,在一些实施例中,三维重建方法可被实现为计算机软件程序,其被有形地包含于机器可读存 储介质,例如存储器708。在一些实施例中,计算机程序的部分或者全部可以经由ROM 702和/或通信单元709而被载入和/或安装到电子设备700上。当计算机程序加载到RAM 703并由处理器701执行时,可以执行上文描述的三维重建方法的一个或多个步骤。备选地,在其他实施例中,处理器701可以通过其他任何适当的方式(例如,借助于固件)而被配置为执行三维重建方法。 Processor 701 may be various general and/or special purpose processing components having processing and computing capabilities. Some examples of processor 701 include, but are not limited to, central processing units (CPUs), graphics processing units (GPUs), various dedicated artificial intelligence (AI) computing chips, various processors that run machine learning model algorithms, digital signal processing processor (DSP), and any suitable processor, controller, microcontroller, etc. The processor 701 executes various methods and processes described above, such as a three-dimensional reconstruction method. For example, in some embodiments, the three-dimensional reconstruction method may be implemented as a computer software program tangibly embodied on a machine-readable storage medium, such as memory 708. In some embodiments, part or all of the computer program can be loaded and/or installed on the electronic device 700 via the ROM 702 and/or the communication unit 709. When the computer program is loaded into RAM 703 and executed by processor 701, one or more steps of the three-dimensional reconstruction method described above can be performed. Alternatively, in other embodiments, the processor 701 may be configured in any other appropriate way (for example, by means of firmware) to execute the three-dimensional reconstruction method.
本文中以上描述的系统和技术的各种实施方式可以在数字电子电路系统、集成电路系统、场可编程门阵列(FPGA)、专用集成电路(ASIC)、专用标准产品(ASSP)、芯片上系统的系统(SOC)、负载可编程逻辑设备(CPLD)、计算机硬件、固件、软件、和/或它们的组合中实现。这些各种实施方式可以包括:实施在一个或者多个计算机程序中,该一个或者多个计算机程序可在包括至少一个可编程处理器的可编程系统上执行和/或解释,该可编程处理器可以是专用或者通用可编程处理器,可以从存储系统、至少一个输入装置、和至少一个输出装置接收数据和指令,并且将数据和指令传输至该存储系统、该至少一个输入装置、和该至少一个输出装置。Various implementations of the systems and techniques described above herein can be implemented in digital electronic circuit systems, integrated circuit systems, field programmable gate arrays (FPGAs), application specific integrated circuits (ASICs), application specific standard products (ASSPs), systems on chips Implemented in a system of systems (SOC), load programmable logic device (CPLD), computer hardware, firmware, software, and/or combinations thereof. These various embodiments may include being implemented in one or more computer programs executable and/or interpreted on a programmable system including at least one programmable processor, the programmable processor Can be special-purpose or general-purpose programmable processor, can receive data and instruction from storage system, at least one input device, and at least one output device, and transmit data and instruction to this storage system, this at least one input device, and this at least one output device an output device.
用于实施本公开的方法的程序代码可以采用一个或多个编程语言的任何组合来编写。上述程序代码可以封装成计算机程序产品。这些程序代码或计算机程序产品可以提供给通用计算机、专用计算机或其他可编程数据处理装置的处理器或控制器,使得程序代码当由处理器701执行时使流程图和/或框图中所规定的功能/操作被实施。程序代码可以完全在机器上执行、部分地在机器上执行,作为独立软件包部分地在机器上执行且部分地在远程机器上执行或完全在远程机器或服务器上执行。Program codes for implementing the methods of the present disclosure may be written in any combination of one or more programming languages. The above program code can be packaged into a computer program product. These program codes or computer program products may be provided to a processor or controller of a general-purpose computer, a special-purpose computer, or other programmable data processing apparatus, so that the program codes, when executed by the processor 701, make the flow diagrams and/or block diagrams specified The function/operation is implemented. The program code may execute entirely on the machine, partly on the machine, as a stand-alone software package partly on the machine and partly on a remote machine or entirely on the remote machine or server.
在本公开的上下文中,机器可读存储介质可以是有形的介质,其可以包含或存储以供指令执行系统、装置或设备使用或与指令执行系统、装置或设备结合地使用的程序。机器可读存储介质可以是机器可读信号存储介质或机器可读存储介质。机器可读存储介质可以包括但不限于电子的、磁性的、光学的、电磁的、红外的、或半导体系统、装置或设备,或者上述内容的任何合适组合。机器可读存储介质的更 具体示例会包括基于一个或多个线的电气连接、便携式计算机盘、硬盘、随机存取存储器(RAM)、只读存储器(ROM)、可擦除可编程只读存储器(EPROM或快闪存储器)、光纤、便捷式紧凑盘只读存储器(CD-ROM)、光学存储设备、磁存储设备、或上述内容的任何合适组合。In the context of the present disclosure, a machine-readable storage medium may be a tangible medium that may contain or store a program for use by or in conjunction with an instruction execution system, apparatus, or device. The machine-readable storage medium may be a machine-readable signal storage medium or a machine-readable storage medium. A machine-readable storage medium may include, but is not limited to, electronic, magnetic, optical, electromagnetic, infrared, or semiconductor systems, apparatus, or devices, or any suitable combination of the foregoing. More specific examples of machine-readable storage media would include one or more wire-based electrical connections, portable computer discs, hard drives, random access memory (RAM), read only memory (ROM), erasable programmable read only memory (EPROM or flash memory), optical fiber, compact disk read-only memory (CD-ROM), optical storage devices, magnetic storage devices, or any suitable combination of the foregoing.
为了提供与用户的交互,可以在计算机上实施此处描述的系统和技术,该计算机具有:用于向用户显示信息的显示装置(例如,CRT(阴极射线管)或者LCD(液晶显示器)监视器);以及键盘和指向装置(例如,鼠标或者轨迹球),用户可以通过该键盘和该指向装置来将输入提供给计算机。其它种类的装置还可以用于提供与用户的交互;例如,提供给用户的反馈可以是任何形式的传感反馈(例如,视觉反馈、听觉反馈、或者触觉反馈);并且可以用任何形式(包括声输入、语音输入或者、触觉输入)来接收来自用户的输入。To provide for interaction with the user, the systems and techniques described herein can be implemented on a computer having a display device (e.g., a CRT (cathode ray tube) or LCD (liquid crystal display) monitor) for displaying information to the user. ); and a keyboard and pointing device (eg, a mouse or a trackball) through which a user can provide input to the computer. Other kinds of devices can also be used to provide interaction with the user; for example, the feedback provided to the user can be any form of sensory feedback (e.g., visual feedback, auditory feedback, or tactile feedback); and can be in any form (including Acoustic input, speech input or, tactile input) to receive input from the user.
可以将此处描述的系统和技术实施在包括后台部件的计算系统(例如,作为数据服务器)、或者包括中间件部件的计算系统(例如,应用服务器)、或者包括前端部件的计算系统(例如,具有图形用户界面或者网络浏览器的用户计算机,用户可以通过该图形用户界面或者该网络浏览器来与此处描述的系统和技术的实施方式交互)、或者包括这种后台部件、中间件部件、或者前端部件的任何组合的计算系统中。可以通过任何形式或者介质的数字数据通信(例如,通信网络)来将系统的部件相互连接。通信网络的示例包括:局域网(LAN)、广域网(WAN)和互联网。The systems and techniques described herein can be implemented in a computing system that includes back-end components (e.g., as a data server), or a computing system that includes middleware components (e.g., an application server), or a computing system that includes front-end components (e.g., as a a user computer having a graphical user interface or web browser through which a user can interact with embodiments of the systems and techniques described herein), or including such backend components, middleware components, Or any combination of front-end components in a computing system. The components of the system can be interconnected by any form or medium of digital data communication, eg, a communication network. Examples of communication networks include: Local Area Network (LAN), Wide Area Network (WAN) and the Internet.
计算机系统可以包括客户端和服务器。客户端和服务器一般远离彼此并且通常通过通信网络进行交互。通过在相应的计算机上运行并且彼此具有客户端-服务器关系的计算机程序来产生客户端和服务器的关系。服务器可以是云服务器,又称为云计算服务器或云主机,是云计算服务体系中的一项主机产品,以解决了传统物理主机与VPS服务(“Virtual Private Server”,或简称“VPS”)中,存在的管理难度大,业务扩展性弱的缺陷。服务器也可以是分布式系统的服务器,或者是结合了区块链的服务器。A computer system may include clients and servers. Clients and servers are generally remote from each other and typically interact through a communication network. The relationship of client and server arises by computer programs running on the respective computers and having a client-server relationship to each other. The server can be a cloud server, also known as a cloud computing server or cloud host, which is a host product in the cloud computing service system to solve the problem of traditional physical host and VPS service ("Virtual Private Server", or "VPS") Among them, there are defects such as difficult management and weak business scalability. The server can also be a server of a distributed system, or a server combined with a blockchain.
应该理解,可以使用上面所示的各种形式的流程,重新排序、增加或删除步骤。例如,本公开中记载的各步骤可以并行地执行也可以顺序地执行也可以不同的次序执行,只要能够实现本公开的技术方案所期望的结果,本文在此不进行限制。It should be understood that steps may be reordered, added or deleted using the various forms of flow shown above. For example, each step described in the present disclosure may be executed in parallel, sequentially, or in a different order, as long as the desired result of the technical solution of the present disclosure can be achieved, no limitation is imposed herein.
上述具体实施方式,并不构成对本公开保护范围的限制。本领域技术人员应该明白的是,根据设计要求和其他因素,可以进行各种修改、组合、子组合和替代。任何在本公开的精神和原则之内所作的修改、等同替换和改进等,均应包含在本公开的保护范围之内。The specific implementation manners described above do not limit the protection scope of the present disclosure. It should be apparent to those skilled in the art that various modifications, combinations, sub-combinations and substitutions may be made depending on design requirements and other factors. Any modifications, equivalent replacements and improvements made within the spirit and principles of the present disclosure shall fall within the protection scope of the present disclosure.

Claims (17)

  1. 一种图像采集系统,包括:An image acquisition system, comprising:
    拍摄台;shooting stage;
    设置在所述拍摄台四周的多个补光设备,所述多个补光设备与所述拍摄台的相对位置固定,所述多个补光设备与第一控制器连接,被配置为在接收到所述第一控制器发送的补光指令时同时发出补光图案,对固定在拍摄台上的目标物体进行补光;以及A plurality of supplementary light devices arranged around the shooting platform, the relative positions of the plurality of supplementary light devices and the shooting platform are fixed, the plurality of supplementary light devices are connected to the first controller, and are configured to receive At the same time as the supplementary light instruction sent by the first controller, a supplementary light pattern is issued to supplement the light on the target object fixed on the shooting platform; and
    可围绕所述拍摄台转动的至少一个图像采集设备,所述至少一个图像采集设备与第二控制器连接,被配置为响应于所述第二控制器发送的采集指令,在预设的多个采集位置处对所述目标物体进行拍摄,以采集所述目标物体的图像。At least one image acquisition device that can rotate around the shooting platform, the at least one image acquisition device is connected to the second controller, and is configured to respond to the acquisition instruction sent by the second controller, within a preset number of The target object is photographed at the collection position to collect an image of the target object.
  2. 根据权利要求1所述的图像采集系统,其中,所述多个补光设备中相邻的补光设备的补光范围之间具有重合区域。The image acquisition system according to claim 1, wherein there is an overlapping area between the supplementary light ranges of adjacent supplementary light devices among the plurality of supplementary light devices.
  3. 根据权利要求1所述的图像采集系统,其中,所述预设的多个采集位置包括多个采集位置集合,每个采集位置集合中的采集位置位于同一圆形轨道上。The image acquisition system according to claim 1, wherein the preset plurality of acquisition positions includes a plurality of acquisition position sets, and the acquisition positions in each acquisition position set are located on the same circular orbit.
  4. 根据权利要求3所述的图像采集系统,其中,每个采集位置集合中相邻的两个采集位置之间的圆心角处于预设角度范围内。The image acquisition system according to claim 3, wherein the central angle between two adjacent acquisition positions in each acquisition position set is within a preset angle range.
  5. 根据权利要求1所述的图像采集系统,其中,所述多个补光设备均匀地设置于所述拍摄台的四周,且所述多个补光设备发出的补光图案覆盖所述目标物体的全表面。The image acquisition system according to claim 1, wherein the plurality of supplementary light devices are evenly arranged around the shooting platform, and the supplementary light patterns emitted by the plurality of supplementary light devices cover the target object full surface.
  6. 根据权利要求1所述的图像采集系统,其中,所述拍摄台以及所述多个补光设备可以同步旋转。The image acquisition system according to claim 1, wherein the shooting table and the plurality of supplementary light devices can rotate synchronously.
  7. 根据权利要求1所述的图像采集系统,其中,所述多个补光设备发出的补光图案的颜色可切换。The image acquisition system according to claim 1, wherein the colors of the supplementary light patterns emitted by the plurality of supplementary light devices are switchable.
  8. 根据权利要求1所述的图像采集系统,其中,所述多个补光设备发出的补光图案未照射到所述至少一个图像采集设备的光学镜头。The image acquisition system according to claim 1, wherein the supplementary light patterns emitted by the plurality of supplementary light devices do not illuminate the optical lens of the at least one image acquisition device.
  9. 一种三维重建方法,包括:A three-dimensional reconstruction method, comprising:
    获取目标物体的第一图像集合,所述第一图像集合通过权利要求1-8中任一项所述的图像采集系统在多个补光设备发出补光图案时采集,所述第一图像集合中的任意两张第一图像存在重合区域,各第一图像包括预设图案的部分或全部;Acquiring a first set of images of the target object, the first set of images is collected by the image acquisition system according to any one of claims 1-8 when multiple supplementary light devices emit supplementary light patterns, the first collection of images Any two of the first images in there are overlapping areas, and each first image includes part or all of the preset pattern;
    提取所述第一图像集合中各第一图像的特征点;extracting feature points of each first image in the first image set;
    根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集;According to the feature points of each first image, perform feature point matching on at least two first images with overlapping regions to obtain a matching feature point set;
    基于所述匹配特征点集,对所述目标物体进行三维重建,得到三维重建模型。Based on the set of matching feature points, three-dimensional reconstruction is performed on the target object to obtain a three-dimensional reconstruction model.
  10. 根据权利要求9所述的三维重建方法,其中,所述方法还包括:The three-dimensional reconstruction method according to claim 9, wherein the method further comprises:
    获取第二图像集合,所述第二图像集合通过权利要求1-8中任一项所述的图像采集系统在多个补光设备未发出补光图案时采集;Acquiring a second set of images, the second set of images is collected by the image acquisition system according to any one of claims 1-8 when a plurality of supplementary light devices do not emit a supplementary light pattern;
    根据所述第二图像集合,确定纹理图像;determining a texture image according to the second set of images;
    将所述纹理图像融合到所述三维重建模型。The texture image is fused to the three-dimensional reconstruction model.
  11. 根据权利要求9所述的三维重建方法,其中,所述基于所述匹配特征点集,对所述目标物体进行三维重建,得到三维重建模型,包括:The three-dimensional reconstruction method according to claim 9, wherein said performing three-dimensional reconstruction on said target object based on said matching feature point set to obtain a three-dimensional reconstruction model comprises:
    确定所述匹配特征点集中各匹配特征点的三维坐标以及各第一图像的相机位姿;Determining the three-dimensional coordinates of each matching feature point in the set of matching feature points and the camera pose of each first image;
    根据各匹配特征点的三维坐标以及各第一图像的相机位姿,计算稠密点云;Calculate the dense point cloud according to the three-dimensional coordinates of each matching feature point and the camera pose of each first image;
    根据所述稠密点云进行表面网格重建,确定三维重建模型。Perform surface grid reconstruction according to the dense point cloud to determine a three-dimensional reconstruction model.
  12. 一种三维重建装置,包括:A three-dimensional reconstruction device, comprising:
    第一图像获取单元,被配置成获取目标物体的第一图像集合,所述第一图像集合通过权利要求1-8中任一项所述的图像采集系统在多个补光设备发出补光图案时采集,所述第一图像集合中的任意两张第一图像存在重合区域,各第一图像包括预设图案的部分或全部;The first image acquisition unit is configured to acquire a first image collection of the target object, and the first image collection emits supplementary light patterns on multiple supplementary light devices through the image acquisition system according to any one of claims 1-8 Acquisition at the same time, any two first images in the first image set have overlapping areas, and each first image includes part or all of the preset pattern;
    特征点提取单元,被配置成提取所述第一图像集合中各第一图像的特征点;a feature point extraction unit configured to extract feature points of each first image in the first image set;
    特征点匹配单元,被配置成根据各第一图像的特征点,对存在重合区域的至少两张第一图像进行特征点匹配,得到匹配特征点集;The feature point matching unit is configured to perform feature point matching on at least two first images with overlapping regions according to the feature points of each first image, to obtain a matching feature point set;
    三维重建单元,被配置成基于所述匹配特征点集,对所述目标物体进行三维重建,得到三维重建模型。The 3D reconstruction unit is configured to perform 3D reconstruction on the target object based on the matching feature point set to obtain a 3D reconstruction model.
  13. 根据权利要求12所述的三维重建装置,其中,所述三维重建装置还包括:The three-dimensional reconstruction device according to claim 12, wherein the three-dimensional reconstruction device further comprises:
    第二图像获取单元,被配置成获取第二图像集合,所述第二图像集合通过权利要求1-8中任一项所述的图像采集系统在多个补光设备未发出补光图案时采集;The second image acquisition unit is configured to acquire a second set of images, the second set of images is acquired by the image acquisition system according to any one of claims 1-8 when a plurality of supplementary light devices do not emit supplementary light patterns ;
    纹理图像确定单元,被配置成根据所述第二图像集合,确定纹理图像;a texture image determining unit configured to determine a texture image according to the second set of images;
    纹理图像融合单元,被配置成将所述纹理图像融合到所述三维重建模型。A texture image fusion unit configured to fuse the texture image to the three-dimensional reconstruction model.
  14. 根据权利要求12所述的三维重建装置,其中,所述三维重建单元进一步被配置成:The three-dimensional reconstruction device according to claim 12, wherein the three-dimensional reconstruction unit is further configured to:
    确定所述匹配特征点集中各匹配特征点的三维坐标以及各第一图像的相机位姿;Determining the three-dimensional coordinates of each matching feature point in the set of matching feature points and the camera pose of each first image;
    根据各匹配特征点的三维坐标以及各第一图像的相机位姿,计算稠密点云;Calculate the dense point cloud according to the three-dimensional coordinates of each matching feature point and the camera pose of each first image;
    根据所述稠密点云进行表面网格重建,确定三维重建模型。Perform surface grid reconstruction according to the dense point cloud to determine a three-dimensional reconstruction model.
  15. 一种电子设备,包括:An electronic device comprising:
    至少一个处理器;以及at least one processor; and
    与所述至少一个处理器通信连接的存储器;其中,a memory communicatively coupled to the at least one processor; wherein,
    所述存储器存储有可被所述至少一个处理器执行的指令,所述指令被所述至少一个处理器执行,以使所述至少一个处理器能够执行权利要求9-11中任一项所述的三维重建方法。The memory stores instructions executable by the at least one processor, the instructions are executed by the at least one processor, so that the at least one processor can perform any one of claims 9-11. 3D reconstruction method.
  16. 一种存储有计算机指令的非瞬时计算机可读存储介质,所述计算机指令用于使所述计算机执行权利要求9-11中任一项所述的三维重建方法。A non-transitory computer-readable storage medium storing computer instructions, the computer instructions are used to make the computer execute the three-dimensional reconstruction method described in any one of claims 9-11.
  17. 一种计算机程序产品,包括计算机程序,所述计算机程序在被处理器执行时实现根据权利要求9-11中任一项所述的三维重建方法。A computer program product comprising a computer program which, when executed by a processor, implements the three-dimensional reconstruction method according to any one of claims 9-11.
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