CN111964604A - Plane deformation monitoring and measuring method based on image recognition - Google Patents

Plane deformation monitoring and measuring method based on image recognition Download PDF

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CN111964604A
CN111964604A CN202011121052.6A CN202011121052A CN111964604A CN 111964604 A CN111964604 A CN 111964604A CN 202011121052 A CN202011121052 A CN 202011121052A CN 111964604 A CN111964604 A CN 111964604A
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张宇捷
王璐
岳朋成
都海伦
马雪林
施玉峰
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Changzhou Architectual Research Institute Group Co Ltd
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01BMEASURING LENGTH, THICKNESS OR SIMILAR LINEAR DIMENSIONS; MEASURING ANGLES; MEASURING AREAS; MEASURING IRREGULARITIES OF SURFACES OR CONTOURS
    • G01B11/00Measuring arrangements characterised by the use of optical techniques
    • G01B11/16Measuring arrangements characterised by the use of optical techniques for measuring the deformation in a solid, e.g. optical strain gauge

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Abstract

The invention relates to a plane deformation monitoring and measuring method based on image recognition, which comprises the steps of collecting images through a camera, obtaining a plurality of images and uploading the images; processing and calculating the uploaded image; calculating the actual relative position between target monitoring points on a single image, and calculating the horizontal closure difference and the vertical closure difference of a measured circle; adopting elevation transmission and displacement transmission, combining the closure difference to carry out adjustment, calculating and storing the actual relative position between the target monitoring points; the steps are circulated once; and comparing the calculation results of the previous and subsequent times to obtain the actual deformation of each target monitoring point relative to the initial target monitoring point in the monitoring plane. The invention uses the rotatable zoom camera with fixed position to shoot the deformation of the target, and adopts the algorithm to calculate the deformation of each monitoring point in the monitoring plane, thereby realizing the deformation measurement of a plurality of targets by one observation point, and further realizing the deformation monitoring of the non-contact building with low cost.

Description

Plane deformation monitoring and measuring method based on image recognition
Technical Field
The invention relates to the technical field of engineering plane deformation monitoring and measurement, in particular to a plane deformation monitoring and measuring method based on image recognition.
Background
The monitoring of engineering deformation such as municipal administration, bridges, water conservancy, civil engineering and the like is an important content of structural health monitoring and an important index for evaluating structural stability. In conventional measurement methods represented by levels, total stations and the like, the monitoring means have large workload and are greatly influenced by the operation mode of the instrument. The new monitoring means represented by a measuring robot, a three-dimensional laser scanning technology, a static leveling measurement and the like are influenced by factors such as fields, installation difficulty, price and the like, and are difficult to popularize.
The visual deformation monitoring and measuring technology integrates photogrammetry, image processing and computer technology, a target image is obtained by non-measuring digital camera equipment, the image is processed by a computer, and the change of the target image on an image sequence is compared, so that the two-dimensional displacement deformation monitoring technology of displacement is calculated.
However, the existing image processing method adopts a fixed-point orientation mode, one device observes one point at a fixed visual angle, the efficiency is low, and for monitoring a measurement scene in a large area and a long distance, a plurality of devices are needed, so that the installation workload is increased while the method is not economical.
Disclosure of Invention
The technical problem to be solved by the invention is as follows: the plane deformation monitoring and measuring method based on image recognition is provided, and non-contact measurement of deformation of a target object is realized by adopting a graph splicing and displacement data transmission method.
The technical scheme adopted by the invention for solving the technical problems is as follows: a plane deformation monitoring and measuring method based on image recognition comprises the following steps,
1) acquiring images of all target monitoring points through a camera to obtain a plurality of images, wherein each image at least comprises two target monitoring points, and then transmitting the images to an image processing platform of a server;
2) processing and calculating the uploaded image to obtain the image relative position between the first target monitoring point and the last target monitoring point on a single image;
3) calculating the actual relative position between the two target monitoring points on the single image according to the relative position of the image between the two target monitoring points in the step 2), and calculating the horizontal closure difference and the vertical closure difference measured back according to the actual relative position between the two target monitoring points;
4) adopting elevation transmission and displacement transmission, carrying out adjustment by combining the horizontal closure difference and the vertical closure difference in the step 3), calculating and storing the actual relative positions of the rest target monitoring points relative to the initial target monitoring point;
5) cycling steps 1) -4) once;
6) and comparing the currently obtained calculation results of the actual relative positions of the other target monitoring points relative to the initial target monitoring point with the previously obtained calculation results of the actual relative positions of the other target monitoring points relative to the initial target monitoring point to obtain the actual deformation of each target monitoring point relative to the initial target monitoring point in the monitoring plane.
Further, in step 1), the camera is a rotary camera lens capable of adjusting focal length parameters; the target monitoring points are multiple, and all the target monitoring points are located in the same plane.
Still further, the target monitoring point is provided with a circular target with the diameter of M, and M is 10-15 cm.
Furthermore, in the step 1), n target monitoring points are provided, wherein n is a natural number greater than 1, the length of a measuring section shot each time is set as two adjacent target monitoring points during image acquisition, and the focal length of the camera is adjusted once every time a measuring section is shot; the images are shot between two points, and n target monitoring points shoot 2 (n-1) images in a reciprocating mode.
Still further, in step 2) of the present invention, the calculation method of the relative position of the image is as follows:
respectively identifying targets of two adjacent target monitoring points on the image, and calculating the coordinates of the central points of the two targetsAnd the pixel length of the horizontal and vertical axes of the two targets, and the coordinate of the center point of the point i target on the ith image is (x)2i-1,y2i-1) The coordinate of the central point of the (i +1) point target is (x)2i,y2i) (ii) a The pixel length of the horizontal and vertical axes of the i point target is (a)2i-1,b2i-1) The pixel length of the horizontal and vertical axes of the (i +1) point target is (a)2i,b2i)。
Still further, in step 3), the method for calculating the actual relative position between the two target monitoring points on the single image according to the relative position between the two target monitoring points in step 2) is as follows:
calculating the pixel difference value between the two adjacent target monitoring points according to the central point coordinates of the targets of the two adjacent target monitoring points
Figure 287184DEST_PATH_IMAGE001
(ii) a Then the actual relative position coordinates of the (i +1) point are,
Figure 138597DEST_PATH_IMAGE002
wherein
Figure 289086DEST_PATH_IMAGE003
Figure 932557DEST_PATH_IMAGE004
Respectively as average conversion ratios in the horizontal and vertical axis directions of the intermediate image,
Figure 408669DEST_PATH_IMAGE005
Figure 137591DEST_PATH_IMAGE006
still further, in step 3) of the present invention, a horizontal closure difference is measured
Figure 849630DEST_PATH_IMAGE007
And vertical closure difference
Figure 347607DEST_PATH_IMAGE008
Comprises the following steps:
Figure 260199DEST_PATH_IMAGE009
Figure 86204DEST_PATH_IMAGE010
still further, in step 4) of the present invention, the closure difference is determined according to the horizontal
Figure 968709DEST_PATH_IMAGE011
And vertical closure difference
Figure 930980DEST_PATH_IMAGE012
Calculating the horizontal correction number of each measurement section
Figure 873529DEST_PATH_IMAGE013
And vertical correction number
Figure 452409DEST_PATH_IMAGE014
Respectively as follows:
Figure 873026DEST_PATH_IMAGE015
Figure 955382DEST_PATH_IMAGE016
the actual relative position coordinate of the (i +1) point after the adjustment correction is
Figure 944198DEST_PATH_IMAGE017
Then, using elevation transfer and displacement transfer, the (i +1) point is relative to the startThe actual relative position of the target monitoring point is
Figure 869429DEST_PATH_IMAGE018
The method provided by the invention has the beneficial effects that the defects in the background technology are overcome, the rotatable zoom camera with a fixed position is used for shooting target monitoring points in sequence, the deformation of each monitoring point is calculated by utilizing the transmission of elevation and displacement and adopting a special graphic algorithm, the deformation measurement of a plurality of targets at one observation point can be realized, and the deformation monitoring of a low-cost non-contact building can be realized.
Drawings
FIG. 1 is a block diagram of the hardware connections of the measurement system of the present invention.
Fig. 2 is a schematic view of the state of the present invention at the time of initial measurement.
FIG. 3 is a vector plot of the distance between two points.
Fig. 4-5 are schematic diagrams of the state of the measurement process of the present invention.
Detailed Description
The invention will now be described in further detail with reference to the drawings and preferred embodiments. These drawings are simplified schematic views illustrating only the basic structure of the present invention in a schematic manner, and thus show only the constitution related to the present invention.
As shown in fig. 1, the system for monitoring and measuring planar deformation based on image recognition is divided into three-level structures, namely, an acquisition end, a server end and a client end. The acquisition end mainly comprises a fixed rotatable camera, a network transmission module, a power management module and an image storage module. The camera is used for collecting images to obtain images of a series of target monitoring points, and the images are transmitted to an image processing platform of the server through the network equipment module. The server side comprises an image processing platform, a data storage platform and an online display platform. The image processing platform calculates and analyzes relative position data of each monitoring point by using a special image processing algorithm and software, and further realizes the monitoring of the deformation of each point; the data storage stores the calculated deformation data into a database; the data display platform displays the deformation data in a high-readability mode through a webpage form.
The fixed rotatable camera used by the deformation monitoring system is customized hardware, debugging can be carried out according to the distribution of site reference points and monitoring points when the monitoring system is installed, and focal length parameters and the rotation angle of the camera each time are preset in matched driving software. In addition, anti-interference and fault-tolerant settings are respectively carried out on software and hardware, original image data are stored in a data storage module according to time and a shooting sequence, and manual remote acquisition and rechecking can be carried out when network abnormality and data abnormality occur.
And the acquired original image is subjected to fidelity transmission through a network transmission module and uploaded to a server. And the server side is configured with a special image processing algorithm and software, processes and calculates the image uploaded by the acquisition equipment, and finally obtains the relative position information of each monitoring point. And comparing the calculation result with the last time result to obtain the relative deformation data of each monitoring point in the horizontal and vertical directions in the monitoring plane. Particularly, when 2 or more cameras are adopted to simultaneously acquire images of the monitoring points at two different angles, the deformation of the monitoring points in the plane normal direction of the monitoring points can be analyzed according to the installation angle and the image parameters of the same monitoring point.
After the deformed data are analyzed, the server stores the data into the database, the data are visually displayed by matching with a webpage platform and a front end on the server, and a user can obtain the data by accessing the address of the display platform.
During measurement, a high-resolution camera lens capable of adjusting focal length parameters and a rotation angle, and a matched picture processing algorithm and software are preset.
For calculation convenience, the measuring method is characterized in that a circular target with the diameter M of 10cm is arranged on a target monitoring point.
The specific measurement method comprises the following steps:
as shown in fig. 1, the number of target monitoring points in this embodiment is 4, and all the target monitoring points are located in the same plane;
1) when the measurement is started, the camera is started first, and the focal length of the camera is adjusted to be f1The first shot is taken as in fig. 2. The method comprises the steps of collecting images of 4 target monitoring points through a camera, setting the length of a measuring section shot at each time as two adjacent target monitoring points, if the length from a point 1 to a point 2 is a measuring section, adjusting the rotation angle of a lens after the shooting of the measuring section is finished, and adjusting the focal length of the camera to be f2Carrying out second shooting, and so on, wherein each shooting is carried out in sequence, the camera rotates once, and the focal length of the camera is adjusted once; shooting between two points, and shooting by 4 target monitoring points back and forth
Figure 234682DEST_PATH_IMAGE019
The images, namely the 1 st image is the point No. 1 and the point No. 2, the 2 nd image is the point No. 2 and the point No. 3, and the 3 rd image is the point No. 3 and the point No. 4; then the camera rotates reversely according to the original angle to shoot, namely the 4 th image is the No. 3 point and the No. 4 point, the 5 th image is the No. 2 point and the No. 3 point, and the 6 th image is the No. 1 point and the No. 2 point; as shown in fig. 4 and 5, the round trip shooting process is a survey; then 6 images are transmitted to an image processing platform of a server; according to another embodiment, the images may be uploaded every time one image is captured, and processing methods such as calculation and conversion of the uploaded images may be the same as those of the present embodiment.
2) Processing and calculating the uploaded image to obtain the image relative position between the point i and the point (i +1) on the ith image;
respectively identifying targets of two adjacent target monitoring points on the image, and calculating the coordinates of the central points of the two targets and the pixel lengths of the horizontal and vertical axes of the two targets, as shown in fig. 3; on the ith image, the coordinate of the center point of the point i target is (x)2i-1,y2i-1) The coordinate of the central point of the (i +1) point target is (x)2i,y2i) (ii) a Since the image may be distorted when photographed, although the target is circular, the finally presented figure is not necessarily circular, and therefore, the pixel length of the horizontal and vertical axes (horizontal and vertical directions) of the i-point target is recorded as (a)2i-1,b2i-1) The pixel length of the horizontal and vertical axes of the (i +1) point target is (a)2i,b2i)。
3) Calculating the actual relative position between the two target monitoring points on a single image according to the relative position of the image between the two target monitoring points, and calculating a measured horizontal closure difference and a measured vertical closure difference according to the actual relative position between the two target monitoring points;
calculating the pixel difference value between the two adjacent target monitoring points according to the central point coordinates of the targets of the two adjacent target monitoring points as follows:
Figure 296179DEST_PATH_IMAGE001
(ii) a Since the visual angle of the camera is not necessarily perpendicular to the plane of the monitoring point, angular distortion may exist, and therefore, when the actual relative position is converted, the conversion ratio of the intermediate image is estimated by taking the average conversion ratio of the horizontal axis and the vertical axis near the two target points so as to eliminate the influence of the angular distortion.
Then the actual relative position coordinates of the (i +1) point are,
Figure 190317DEST_PATH_IMAGE002
wherein
Figure 602844DEST_PATH_IMAGE003
Figure 771788DEST_PATH_IMAGE004
Respectively as average conversion ratios in the horizontal and vertical axis directions of the intermediate image,
Figure 953371DEST_PATH_IMAGE020
Figure 18410DEST_PATH_IMAGE006
horizontal closure error of one measurement
Figure 918233DEST_PATH_IMAGE007
And vertical closure difference
Figure 94130DEST_PATH_IMAGE008
Comprises the following steps:
Figure 536744DEST_PATH_IMAGE021
Figure 897318DEST_PATH_IMAGE010
4) adopting elevation transmission and displacement transmission, carrying out adjustment by combining the horizontal closure difference and the vertical closure difference in the step 3), calculating and storing the actual relative positions of the rest target monitoring points relative to the initial target monitoring point;
according to horizontal closure difference
Figure 894224DEST_PATH_IMAGE011
And vertical closure difference
Figure 264025DEST_PATH_IMAGE012
Calculating the horizontal correction number of each measurement section
Figure 29987DEST_PATH_IMAGE022
And vertical correction number
Figure 827042DEST_PATH_IMAGE023
Respectively as follows:
Figure 576823DEST_PATH_IMAGE015
Figure 750316DEST_PATH_IMAGE016
the actual relative position coordinate of the (i +1) point after the adjustment correction is
Figure 370784DEST_PATH_IMAGE024
Then, elevation transfer and displacement are usedPassing the actual relative position of the (i +1) point with respect to the starting target monitoring point is
Figure 479685DEST_PATH_IMAGE018
5) Cycling steps 1) -4) once, and starting the second measurement;
6) and comparing the calculation result of the second measurement with the calculation result of the second measurement, and calculating the difference between the relative positions of the monitoring points of the two adjacent measurements to obtain the relative displacement (horizontal displacement and vertical displacement) of the monitoring points of the two measurements in the plane, thereby monitoring the deformation of the building in the monitoring plane.
In the present embodiment, point No. 1 is set as a reference point with little or no deformation, and according to another embodiment, a reference point without deformation may be provided at a non-deformed position outside the monitoring plane of the target monitoring point. The reference point and the initial measurement point of the target monitor may be simultaneously present on the first image.
The plane deformation monitoring and measuring method based on image recognition can realize low-cost non-contact plane deformation monitoring. After the primary installation, manual intervention is not needed, and the defect that the deformation monitoring is carried out by the conventional geodetic surveying method is effectively overcome.
The invention relates to a lens rotation focusing design, which can realize the measurement of horizontal displacement and vertical displacement of a plurality of monitoring points by a single lens through the transmission of elevation and displacement of image marking points, and reduce the cost of hardware arrangement.
While particular embodiments of the present invention have been described in the foregoing specification, various modifications and alterations to the previously described embodiments will become apparent to those skilled in the art from this description without departing from the spirit and scope of the invention.

Claims (8)

1. A plane deformation monitoring and measuring method based on image recognition is characterized in that: comprises the following steps of (a) carrying out,
1) acquiring images of all target monitoring points through a camera to obtain a plurality of images, wherein each image at least comprises two target monitoring points, and then transmitting the images to an image processing platform of a server;
2) processing and calculating the uploaded image to obtain the image relative position between the first target monitoring point and the last target monitoring point on a single image;
3) calculating the actual relative position between the two target monitoring points on the single image according to the relative position of the image between the two target monitoring points in the step 2), and calculating the horizontal closure difference and the vertical closure difference measured back according to the actual relative position between the two target monitoring points;
4) adopting elevation transmission and displacement transmission, carrying out adjustment by combining the horizontal closure difference and the vertical closure difference in the step 3), calculating and storing the actual relative positions of the rest target monitoring points relative to the initial target monitoring point;
5) cycling steps 1) -4) once;
6) and comparing the currently obtained calculation results of the actual relative positions of the other target monitoring points relative to the initial target monitoring point with the previously obtained calculation results of the actual relative positions of the other target monitoring points relative to the initial target monitoring point to obtain the actual deformation of each target monitoring point relative to the initial target monitoring point in the monitoring plane.
2. The method as claimed in claim 1, wherein the method comprises the following steps: in the step 1), the camera is a rotary camera lens capable of adjusting focal length parameters; the target monitoring points are multiple, and all the target monitoring points are located in the same plane.
3. The image-recognition-based planar deformation monitoring and measuring method of claim 2, wherein: the target monitoring point is provided with a circular target with the diameter of M, and M is 10-15 cm.
4. The image-recognition-based planar deformation monitoring and measuring method of claim 3, wherein: in the step 1), n target monitoring points are provided, wherein n is a natural number greater than 1, the length of a measuring section shot each time is set to be two adjacent target monitoring points during image acquisition, and the focal length of a camera is adjusted once every time a measuring section is shot; the images are shot between two points, and n target monitoring points shoot 2 (n-1) images in a reciprocating mode.
5. The image-recognition-based planar deformation monitoring and measuring method of claim 4, wherein: in the step 2), the calculation mode of the relative position of the image is as follows:
respectively identifying targets of two adjacent target monitoring points on the image, calculating the central point coordinates of the two targets and the pixel length of the horizontal and vertical axes of the two targets, wherein the central point coordinate of the point i target on the ith image is (x)2i-1,y2i-1) The coordinate of the central point of the (i +1) point target is (x)2i,y2i) (ii) a The pixel length of the horizontal and vertical axes of the i point target is (a)2i-1,b2i-1) The pixel length of the horizontal and vertical axes of the (i +1) point target is (a)2i,b2i)。
6. The image-recognition-based planar deformation monitoring and measuring method of claim 5, wherein: in the step 3), the mode of calculating the actual relative position between the two target monitoring points on the single image according to the relative position of the image between the two target monitoring points in the step 2) is as follows:
calculating the pixel difference value between the two adjacent target monitoring points according to the central point coordinates of the targets of the two adjacent target monitoring points as follows:
Figure 577526DEST_PATH_IMAGE001
(ii) a Then the actual relative position coordinates of the (i +1) point are,
Figure 85868DEST_PATH_IMAGE002
wherein
Figure 951056DEST_PATH_IMAGE003
Figure 417809DEST_PATH_IMAGE004
Respectively as average conversion ratios in the horizontal and vertical axis directions of the intermediate image,
Figure 1237DEST_PATH_IMAGE005
Figure 313270DEST_PATH_IMAGE006
7. the system of claim 6, wherein the image recognition based plane deformation monitoring and measuring method comprises: in the step 3), the horizontal closing difference is measured
Figure 298544DEST_PATH_IMAGE007
And vertical closure difference
Figure 405040DEST_PATH_IMAGE008
Comprises the following steps:
Figure 803660DEST_PATH_IMAGE009
Figure 857067DEST_PATH_IMAGE010
8. the system of claim 7, wherein the planar deformation monitoring and measuring method based on image recognition comprises: in the step 4), the rootAccording to horizontal closure difference
Figure 493585DEST_PATH_IMAGE011
And vertical closure difference
Figure 974244DEST_PATH_IMAGE012
Calculating the horizontal correction number of each measurement section
Figure 329002DEST_PATH_IMAGE013
And vertical correction number
Figure 186100DEST_PATH_IMAGE014
Respectively as follows:
Figure 208283DEST_PATH_IMAGE015
Figure 656582DEST_PATH_IMAGE016
the actual relative position coordinate of the (i +1) point after the adjustment correction is
Figure 701898DEST_PATH_IMAGE017
Then, using elevation and displacement transfer, the actual relative position of the (i +1) point with respect to the initial target monitoring point is
Figure 425003DEST_PATH_IMAGE018
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