WO2019148739A1 - Procédé et système de traitement compréhensif d'une image floue - Google Patents

Procédé et système de traitement compréhensif d'une image floue Download PDF

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WO2019148739A1
WO2019148739A1 PCT/CN2018/091164 CN2018091164W WO2019148739A1 WO 2019148739 A1 WO2019148739 A1 WO 2019148739A1 CN 2018091164 W CN2018091164 W CN 2018091164W WO 2019148739 A1 WO2019148739 A1 WO 2019148739A1
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edge
image
blur
blurred
optimal
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白海玲
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上海康斐信息技术有限公司
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T5/00Image enhancement or restoration
    • G06T5/73Deblurring; Sharpening
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T3/00Geometric image transformations in the plane of the image
    • G06T3/40Scaling of whole images or parts thereof, e.g. expanding or contracting
    • G06T3/4053Scaling of whole images or parts thereof, e.g. expanding or contracting based on super-resolution, i.e. the output image resolution being higher than the sensor resolution
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/10Segmentation; Edge detection
    • G06T7/13Edge detection
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/20Special algorithmic details
    • G06T2207/20048Transform domain processing
    • G06T2207/20061Hough transform
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/20Special algorithmic details
    • G06T2207/20172Image enhancement details
    • G06T2207/20192Edge enhancement; Edge preservation
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/20Special algorithmic details
    • G06T2207/20172Image enhancement details
    • G06T2207/20201Motion blur correction

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  • the present invention relates to the field of image processing technologies, and in particular, to a fuzzy image integration processing method and system.
  • Image acquisition may result in inaccurate focus, or relative motion of the camera and the camera, camera distortion, air diffraction, etc., resulting in unsatisfactory images, losing useful information in the image, that is, image degradation. . It hinders the subsequent processing analysis, especially in the face of some non-replicable scenes. Therefore, for such cases, restoring the original appearance of the scene is an urgent problem to be solved.
  • the actual design can add optical devices, improve transmission equipment and other hardware means such as electronic image shift compensation, optical image shift compensation, mechanical image shift compensation to improve the quality of the captured image, but because the device process is too complicated, The impact of many factors such as high cost and long adjustment time is not universal. Therefore, using image restoration technology to improve image quality from image compensation is a correct, low-cost, low-cost option. .
  • PSF point spread function
  • the degradation model can be used to reverse the degradation process by algorithm to achieve the restoration of the blurred image.
  • the most suitable restoration algorithm can not be selected to help the image restoration.
  • the point spread function estimation is not accurate, and the selected restoration algorithm is not appropriate, which will result in low quality.
  • Restoration not only can not get better fuzzy image restoration effect, but also make the blurred image more fuzzy, so in addition to the accurate estimation of the point spread function is important, it also needs to obtain accurate prior knowledge, that is, the image Causes of degradation and types of blurring, etc.
  • Image restoration algorithms are mathematically defined as a class of ill-posed inverse problems. Knowing the cause, the result is a positive problem, and the known result is the inverse problem; the image restoration algorithm is an algorithm that knows the reason for the reverse of the result.
  • the ill-posed inverse problem means that the reverse push process is very unstable, that is, it is affected by slight noise, which will cause very large interference to the final speculation, resulting in incorrect results. Therefore, the image is restored to minimize the impact of interference on the reverse process.
  • the image restoration algorithms commonly used in the prior art include RL filtering, constrained least squares filtering, Wiener filtering, and regular filtering.
  • Common fuzzy image types include motion blur and defocus blur.
  • the patent document disclosed in the publication No. CN104331871A discloses "an image deblurring method and apparatus", comprising: performing blur region detection on a to-be-processed image, determining a blur region image, and determining a blur type of the blur region, if the blur region If the blur type of the image is defocus blur, the defocus blur parameter estimation algorithm based on differential image autocorrelation is used to determine the defocus radius. If the blur type of the blur region image is motion blur, the motion blur based on cepstrum analysis The parameter estimation algorithm determines the blur direction and the blur scale, and substitutes the estimated parameters into the classical image restoration algorithm to obtain the restored image.
  • the patent uses different methods to estimate the parameters necessary for restoration according to different types of blur.
  • the disc model has a large limitation.
  • the motion blur parameter estimation algorithm based on cepstrum analysis is used to determine the blur direction and blur.
  • the scale does not provide perfect and realistic prior knowledge for image restoration; the classic image restoration algorithm includes Wiener filtering and LR filtering. Wiener filtering is not ideal when the peak signal-to-noise ratio of the blurred image is small, and the LR filtering is not ideal. It is sensitive to noise, and the restored image has a significant ringing effect, that is, the adaptation range is not wide enough.
  • the technical problem to be solved by the present invention is to provide a fuzzy image comprehensive processing method suitable for more real fuzzy image restoration, simple restoration method, strong pertinence, accurate restoration, high speed and high quality, in view of the above-mentioned deficiencies of the prior art. And system.
  • a method for comprehensively processing blurred images comprising the following steps:
  • S10 Identify a blur type of the blurred image according to the elongation of the blurred image spectrogram, where the blur type includes defocus blur and motion blur;
  • the edge kernel method is used to obtain the blur kernel; if the blurred image is motion blur, the adaptive preset algorithm obtains the blur kernel, and the preset algorithm includes at least one algorithm;
  • the method further includes the following steps:
  • S40 processing the clear image by using a super-resolution reconstruction technique to obtain a high-resolution image.
  • acquiring the fuzzy kernel by using the edge method includes the following steps:
  • S202 Acquire a point spread equation according to the optimal edge edge image, where the point spread equation is the blur kernel.
  • step S201 includes the following steps:
  • the gradient values of the edge image are calculated one by one, and the optimal edge image is extracted based on the gradient values.
  • the calculating the gradient value of the edge image and extracting the optimal edge image according to the gradient value comprises the following steps:
  • the absolute value of the difference between the average pixel values of the two sides of the new edge edge point is counted as the gradient value of the edge edge image, and the edge edge image having the largest gradient value is extracted as the optimal edge edge image.
  • step S202 includes the following steps:
  • the point spread equation is calculated using the edge spread function.
  • step S20
  • the adaptive regularization method based on sparse prior is used to estimate the fuzzy kernel.
  • a fuzzy image integrated processing system comprising:
  • a fuzzy type identification module configured to identify a blur type of the blurred image according to an elongation of the blurred image spectrogram, the blur type including defocus blur and motion blur;
  • An estimation module configured to acquire a fuzzy kernel by using a blade edge method if the blurred image is out-of-focus blur; and obtain a fuzzy kernel by using an adaptive preset algorithm if the blurred image is motion blur, the preset algorithm includes at least one algorithm;
  • An image restoration module is configured to obtain a clear image by using a super Laplacian prior deconvolution algorithm based on the fuzzy kernel.
  • system further includes:
  • a high resolution processing module that processes the sharp image using a super-resolution reconstruction technique to obtain a high resolution image
  • the estimation module includes:
  • a defocusing unit for extracting an edge-edge image based on a gradient criterion and acquiring a point-diffusion equation according to the optimal edge-edge image if the blurred image is defocused, and the point-diffusion equation is The blur kernel;
  • a motion blur unit is used to acquire a fuzzy kernel based on a sparse priori regularization method if the blurred image is motion blur.
  • the defocus blur unit includes:
  • An edge detection subunit configured to perform Canny edge detection on the blurred image to obtain an edge detection image
  • a line detection subunit configured to perform a Hough transform on the edge detection image to obtain a step edge image
  • An image intercepting subunit for intercepting a blade edge image of each edge centering on a center point of each edge of the step edge image, the size of the edge edge image being according to the defocused image size and The degree of blur selects a predetermined size to be formed;
  • An image extraction subunit configured to calculate a gradient value of the edge edge image one by one, and extract an optimal edge edge image according to the gradient value;
  • a linear fitting sub-unit for linearly fitting edges in the optimal edge-edge image by using a least squares method to obtain an optimal edge line
  • a scatter plot sub-unit configured to obtain a vertical distance of each pixel point in the optimal edge-edge image to the optimal edge line as an abscissa, and a gray value of each pixel point is an ordinate, forming a dispersion Dot map
  • An edge diffusion function sub-unit for linearly fitting the scatter plot with a Fermi function to obtain an edge spread function
  • a calculation subunit is configured to calculate a point spread equation using the edge spread function.
  • Determining the type of fuzzy image according to the elongation is not only simple, but also suitable for the clear definition of the fuzzy image type in the actual real scene, which can ensure the accuracy of the fuzzy type identification and help to accurately estimate the fuzzy kernel with different degradation mechanisms. .
  • the edge edge method is used to adaptively extract the optimal edge image of the defocused image, and the optimal edge image is obtained based on the gradient criterion.
  • it is beneficial to improve the speed of defocus image restoration, on the other hand, it is beneficial to Avoid blindly extracting the edge image, reduce human interference, and improve the accuracy of image restoration.
  • the fuzzy kernel estimated from the optimal edge-edge image is also closer to the true degradation model, and the recovery speed is faster and more accurate.
  • the adaptive sparse priori-based regularization method estimates the fuzzy kernel of the motion blurred image, and iterates the target multiple times until convergence, which results in more stable and ideal results, thus solving the ill-posed problem in the image restoration problem.
  • the super Laplacian prior deconvolution algorithm is used to obtain clear images.
  • the super Laplace a priori is used as a regular term.
  • the accuracy of the fuzzy kernel is relatively low, and the heavy tail of the natural image gradient can be well satisfied. Distribution, reducing the ringing effect and quickly recovering high quality images.
  • super-resolution reconstruction technology to process the clear image can restore more image details of real objects, help to improve image quality, and help image recognition and image data acquisition and analysis after a series of image restoration operations.
  • Embodiment 1 is a flowchart of a method for comprehensively processing a blurred image according to Embodiment 1 of the present invention
  • FIG. 2 is a flowchart of a method for comprehensively processing a blurred image according to Embodiment 2 of the present invention
  • FIG. 3 is a block diagram of a fuzzy image integrated processing system according to Embodiment 3 of the present invention.
  • FIG. 4 is an overall block diagram of a defocus blur unit according to Embodiment 3 of the present invention.
  • FIG. 5 is a front and rear image display of a defocused image using the present invention, wherein (a) is a blurred image, and (b) is a restored image;
  • Figure 6 is a front and rear image display of a motion blurred image using the present invention, wherein (a) is a blurred image and (b) is a restored image.
  • Image restoration is the process of restoring a clear, high-quality original image from a blurred, noisy, low-quality, poorly-resolution, degraded image.
  • Image restoration firstly analyzes the cause of image distortion according to the image distortion phenomenon.
  • the fuzzy type of fuzzy image is generally divided into two categories: defocus blur and motion blur. Among them, defocus blur is caused by the fact that the image plane is not on the corresponding focal plane; the motion blur is caused by the relative motion between the imaging system and the target. Understand the causes of image distortion and then create different distortion models for different distortion causes, also known as degenerate models, and finally invert them to restore the original clear image.
  • the invention distinguishes the fuzzy type of the blurred image according to the elongation of the blurred image spectrogram, and based on different blur type images, different distortion causes, and performs different algorithms for defocus blur and motion blur to establish respective degradation models, which are more targeted.
  • this embodiment provides a method for comprehensive processing of a blurred image, which includes the following steps:
  • S10 Identify a blur type of the blurred image according to the elongation of the blurred image spectrogram, where the blur type includes defocus blur and motion blur;
  • the blurred image does not necessarily have defocus blur or motion blur in the complete sense, or it may be a mixture of the two, accompanied by some other types of noise, so it is more convenient to extract from the spectrogram.
  • Related geometric features generally perform preprocessing such as smoothing, image enhancement, binarization, etc., and these preprocessing are only used to eliminate noise interference and do not affect the differentiation of true fuzzy image degradation types.
  • the fuzzy type of the blurred image is identified according to the elongation of the blurred image spectrogram, and the elongation is specifically defined as:
  • A is the area of the strip or circle in the spectrogram
  • W and L are the width and length of the smallest rectangle surrounding the target respectively.
  • the method of distinguishing fuzzy types by elongation is simple, the calculation is convenient and fast, and the accuracy of identification is high, which can lay a good foundation for the later use of fuzzy kernel estimation methods for fuzzy kernel estimation.
  • the edge kernel method is used to obtain the blur kernel; if the blurred image is motion blur, the adaptive preset algorithm obtains the blur kernel, and the preset algorithm includes at least one algorithm;
  • the estimation of the fuzzy kernel plays a vital role in the restoration process of the blurred image. If the accuracy of the acquired fuzzy kernel is high, the subsequent restoration can adopt a simpler processing method.
  • the edge is a kind of image feature, which is the most uncertain place in the image, and the most concentrated image information.
  • the edge is also an important basis for image segmentation, and also an important reference for texture analysis and image recognition.
  • the blur of the defocused image mainly refers to the blur of the edge.
  • the edge edge method is used to obtain the step edge first, and the step edge is derived to calculate the point spread function, so that the fuzzy kernel closer to the real data can be obtained.
  • the preset algorithm may be a fuzzy kernel based on two-dimensional discrete wavelet transform and cepstrum analysis. Estimation algorithm, maximum likelihood method, Bayesian estimation algorithm, regularization algorithm, maximum entropy method, partial differential equation based algorithm and many other fuzzy kernel estimation algorithms.
  • the super Laplacian prior deconvolution algorithm is used to obtain a clear image, that is, using super Laplac as the image first. Knowledge, modeling, and rapid restoration of images for high-quality, clear images.
  • Embodiment 2 As shown in FIG. 2, the difference from Embodiment 1 is that the present embodiment provides a method for comprehensively processing a blurred image, and the method further includes the following steps:
  • S40 processing the clear image by using a super-resolution reconstruction technique to obtain a high-resolution image.
  • acquiring the fuzzy kernel by using the edge method includes the following steps:
  • S202 Acquire a point spread equation according to the optimal edge edge image, where the point spread equation is the blur kernel, and the point spread equation is a point spread function, referred to as PSF, which is a spatial function representation of the fuzzy kernel.
  • the step S201 includes the following steps:
  • the Canny edge detection is performed on the blurred image to obtain the edge detection image.
  • the reason why the Canny edge detection operator is selected is that the algorithm has a good suppression effect on noise, single line response, high positioning accuracy, and some parameters involved in the algorithm have Versatility, which can be used for post-image restoration, Canny edge detection operator can detect the general edges in the image.
  • the quasi-determined position of the edge plays a role in the effective estimation of the subsequent transfer function (MTF) and point spread function (PSF).
  • MTF transfer function
  • PSF point spread function
  • the edge detection image is subjected to Hough transform to acquire a step edge image.
  • the optimal edge edge image extraction based on the gradient criterion is provided.
  • a blade edge image of each edge is taken centering on a center point of each edge in the step edge image, and the size of the edge edge image is preferably formed by a predetermined size according to the size of the defocused image and the degree of blur.
  • edge-edge image size should be appropriate, and should include all the important information of the blurred image point spread function; therefore, it is necessary to consider the defocused image when determining the edge-edge image size.
  • the size and blur degree, the edge image block is too small may not contain sufficient information, too large may cause the selected edge to be too curved, the calculation deviation is large, and the calculation process is time consuming, therefore, in actual application, Different images should be properly sized to the edge of the image.
  • the gradient value r of the edge image is calculated one by one, and the optimal edge image is extracted based on the gradient value r.
  • the gradient value r of the edge image is calculated one by one, and an optimal edge image is extracted in a plurality of the edge images according to the magnitude of the gradient value r.
  • the range of the line is larger than the range of the number of lines in which it is located. If the range of the number of columns in the original edge image is smaller than the range of the number of lines in which it is located, the angle is rotated so that the range of the number of columns in which the edge point is located is larger than the range of the number of columns.
  • said calculating the gradient value r of said edge image and extracting the optimal edge image based on the gradient value r comprises the steps of:
  • the edge in the edge image is linearly fitted by the least squares method to obtain the edge line.
  • the edge in the selected edge image is likely not a straight line in the strict sense, or the edge edge point distribution model caused by the edge detection error is not a straight line, so the edge is assumed in this embodiment.
  • the point obeys the straight line model, and the edge point of the edge in the edge image is straight-line fitted by the least square method.
  • the expression of the fitted line is:
  • n is the number of edge points of the edge
  • x k is the number of edge points
  • y k represents the relative position of the edge line.
  • the absolute value of the difference between the average pixel values of the two sides of the new edge edge point is counted as the gradient value r of the edge edge image, and the edge edge image with the largest gradient value r is extracted as the optimal edge edge image.
  • the gradient value r is calculated as follows:
  • the gradient value r calculated by using the edge edge information clearly reflects the distribution of the gray value of the bright and dark areas on both sides of the edge.
  • the step S202 includes the following steps:
  • the optimal edge line here is consistent with the calculation formula of the edge line in step S201. If there is a calculation before the edge line is saved, it can be read directly for calculation.
  • the vertical distance d of each pixel in the optimal edge image to the optimal edge line is obtained as the abscissa, and the gray value of each pixel is the ordinate. Scatter plot.
  • the value is used as the ordinate, so that the ESF scatter plot can be formed smoothly.
  • the distance from the point to the line is calculated as:
  • the scatter plot is linearly fitted using the Fermi function to obtain an edge spread function.
  • the edge spread function ESF can be fitted.
  • the present embodiment selects to be efficient and robust to random noise.
  • the improved Fermi function to fit the ESF the expression is as follows:
  • a point spread equation is calculated using the edge spread function, which is also a point spread function.
  • the line spread function LSF in the y direction can also be obtained in the above manner.
  • the MTF After obtaining the LSF in the x and y directions, the MTF can be obtained by Fourier transform, and then the point spread equation is obtained after convolving the MTF.
  • the PSF model is considered to be isotropic, so the two-dimensional PSF is separable, so the PSF can also be quickly calculated by:
  • the adaptive edge-edge method based on Gaussian model is used to estimate the fuzzy kernel, and the research shows that the degradation type of defocus blur is also coincident with the Gaussian model. Therefore, the method is active compared with the traditional edge-edge method.
  • the optimal edge-edge image is selected as the basic parameter of fuzzy kernel estimation, and the estimated fuzzy kernel energy is closer to the real fuzzy kernel.
  • the reason for the motion blur is mainly caused by the relative displacement change of the pixel, and in actual use, when the motion blur is generated, the relative motion between the target scene and the imaging device is not a uniform motion, so preferably, the In step S20:
  • the adaptive sparse prior method is used to estimate the fuzzy kernel, and the sparsity of the image gradient domain is used as the regular constraint. Firstly, the image pyramid of the blurred image is established, and then the fuzzy kernel and the clear image optimal value of each layer of image are calculated layer by layer by the method of alternating iteration until the last layer calculates the best fuzzy kernel as the parameter used for image restoration.
  • the filtered image is reprocessed by the impulse filter, which can suppress the noise well and strengthen the edge information of the image;
  • IRLS unconstrained iterative Re-weighted Least Squares
  • the embodiment provides a fuzzy image synthesis processing system, which is used to provide a physical implementation basis of the method in Embodiment 2, including:
  • the fuzzy type identification module 100 is configured to identify a blur type of the blurred image according to the elongation of the blurred image spectrogram, where the blur type includes defocus blur and motion blur;
  • the estimation module 200 is configured to obtain a fuzzy kernel by using a blade edge method if the blurred image is out-of-focus blur, and obtain a blur kernel by using an adaptive preset algorithm if the blurred image is motion blur, and the preset algorithm includes at least one Algorithm
  • the image restoration module 300 is configured to obtain a clear image by using a super Laplacian prior deconvolution algorithm based on the fuzzy kernel.
  • system further includes:
  • the high-resolution processing module 400 processes the clear image by using a super-resolution reconstruction technique to obtain a high-resolution image
  • the estimating module 200 includes:
  • the defocusing unit 210 is configured to extract an edge edge image based on a gradient criterion and obtain a point spread equation according to the optimal edge edge image if the blurred image is out of focus, and the point diffusion equation That is, the fuzzy kernel;
  • the motion blur unit 220 is configured to obtain a fuzzy kernel based on a sparse priori regularization method if the blurred image is motion blur.
  • the defocus blur unit 210 includes:
  • the edge detection sub-unit 211 is configured to perform Canny edge detection on the blurred image to obtain an edge detection image.
  • a line detection sub-unit 212 configured to perform a Hough transform on the edge detection image to acquire a step edge image
  • An image intercepting sub-unit 213, configured to intercept a blade edge image of each edge centering on a center point of each edge of the step edge image, the size of the edge edge image being according to the size of the defocused image And the degree of blurring is preferably formed by a predetermined size;
  • An image extraction sub-unit 214 configured to calculate a gradient value r of the edge-edge image one by one, and extract an optimal edge-edge image according to the gradient value r;
  • a linear fitting sub-unit 215, configured to perform linear fitting on the edge in the optimal edge-edge image by using a least square method to obtain an optimal edge line;
  • a scatter plot sub-unit 216 configured to obtain a vertical distance d of each pixel point in the optimal edge-edge image to the optimal edge line as an abscissa, and a gray value of each pixel point is an ordinate, Forming a scatter plot;
  • An edge diffusion function sub-unit 217 configured to perform a linear fit on the scatter plot by using a Fermi function to obtain an edge spread function
  • a calculation subunit 218 is configured to calculate a point spread equation using the edge spread function.
  • the fuzzy type recognition module 100 firstly identifies the blur type of the blurred image according to the elongation of the blurred image spectrogram; and then estimates the blur type to defocus blur by the estimation module 200 using different estimation methods. Or a blurred kernel of the blurred image of the motion blur; and then the image restoration module 300 obtains a clear image according to the restoration of the fuzzy kernel, and finally the clear image is processed by the high-resolution processing module 400 to obtain richer details and higher resolution, which is more advantageous. Identify and analyze images.
  • the estimation module 200 provided by the embodiment has a more accurate and fast fuzzy kernel calculation process for the blur type image with defocus blur, and can reduce human interference, avoid blindly extracting relevant parameters, and the possibility of reducing the reliability of the fuzzy kernel estimation.
  • the evaluation accuracy and speed of the image evaluation factor modulation transfer function (MTF) can be improved, which is more suitable for the restoration of real blurred images than the prior art.
  • FIG. 5 and FIG. 6 are front and rear comparison images of the blurred image after the above processing, and FIG. 5 shows the integrated processing of the defocused image, wherein (a) is a blurred image, and (b) is a restored image; 6 shows the image processing of motion blur, in which (a) is a blurred image and (b) is a restored image.

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Abstract

La présente invention concerne un procédé et un système de traitement compréhensif d'une image floue. Le procédé consiste : S10, à identifier le type de flou d'une image floue en fonction du degré d'allongement d'un spectrogramme d'image floue, le type de flou consistant en un flou de défocalisation et en un flou de mouvement ; S20, si le type de flou de l'image floue est un flou de défocalisation, à obtenir un noyau de flou au moyen d'un procédé de bord coupé au couteau, et si le type de flou de l'image floue est un flou de mouvement, à obtenir le noyau de flou au moyen d'un algorithme adaptatif prédéfini ; et S30, à obtenir une image claire au moyen d'un algorithme de déconvolution avant hyper-Laplace sur la base du noyau de flou. Selon la présente invention, les types de flou d'images floues sont distingués, et des algorithmes d'estimation de noyau de flou correspondants sont définis en fonction de la différence entre des mécanismes de dégradation de différents types de flou, de telle sorte que les noyaux de flou estimés sont plus conformes à des situations réelles. Et notamment en ce qui concerne des images de flou de défocalisation, une estimation de noyau de flou précise basée sur un modèle gaussien est effectuée. La présente invention est appropriée pour la restauration d'images floues plus réelles, le procédé de restauration étant simple et plus ciblé et la restauration étant précise, rapide et de haute qualité.
PCT/CN2018/091164 2018-01-31 2018-06-13 Procédé et système de traitement compréhensif d'une image floue WO2019148739A1 (fr)

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