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Single image super-resolution reconstruction method based on enhanced non-local total variational model a priori

A super-resolution reconstruction, single image technology, applied in the direction of image restoration, non-local variational model and image super-resolution reconstruction, enhanced non-local total variational model prior field, can solve the problem of high-frequency information restoration of images , affecting the non-local modeling of the image, the reliability of non-local similar pixels cannot be accurately estimated, etc.

Active Publication Date: 2018-12-21
SICHUAN UNIV
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Problems solved by technology

However, there are still two major problems in this model: (1) In the multi-offset processing, the influence of the distance into the offset is not considered for target blocks with different offsets; (2) The traditional unnormalized weights are used to define non-normal Local flow, resulting in the reliability of non-locally similar pixels cannot be accurately estimated
These problems will affect the ability of AHNLTV to perform non-local modeling on the image (especially in the high-frequency area of ​​the image), and then affect the restoration of the high-frequency information of the image.

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  • Single image super-resolution reconstruction method based on enhanced non-local total variational model a priori
  • Single image super-resolution reconstruction method based on enhanced non-local total variational model a priori
  • Single image super-resolution reconstruction method based on enhanced non-local total variational model a priori

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[0018] The present invention will be further explained below in conjunction with the drawings:

[0019] figure 1 In, the single image super-resolution reconstruction method based on the priori of the enhanced non-local total variation model can be divided into the following steps:

[0020] (1) Perform bicubic interpolation on the input low-resolution image to obtain the initial high-resolution image estimate;

[0021] (2) Using a multi-offset search strategy to search for similar blocks for each target image block of the estimated high-resolution image, and then obtain the non-locally similar pixel group corresponding to each pixel;

[0022] (3) Based on the attenuation core strategy, large weights are assigned to small offset target image blocks in the multi-offset search processing, and small weights are assigned to large offset target image blocks;

[0023] (4) Calculate the non-local similarity weight between each similar pixel and the target reference pixel based on the attenuation...

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Abstract

The invention discloses a single image super-resolution reconstruction method based on an enhanced non-local total variational model a priori. The method mainly comprises the following steps of: carrying out bicubic interpolation on an input low-resolution image to obtain an initial high-resolution estimation; the non-local similar pixel group corresponding to each pixel is obtained by using the multi-offset search strategy. Based on the attenuation kernel strategy, the weights of the offset target image blocks attenuated with the offset distance are assigned in the multi-offset search process. Based on the stable group similarity reliability strategy, the similarity reliability between each group of similar pixels and the target pixel is obtained. The super-resolution cost function basedon enhanced non-local total variational is constructed and the high-resolution image is solved. Repeat these steps until the number of iterations reaches a preset value. The image reconstructed by theinvention has obvious advantages in both subjective and objective effects, so the invention is an effective single image super-resolution reconstruction method, and can be widely used in the fields of military, medical, agriculture and the like.

Description

Technical field [0001] The invention relates to a non-local variational model and image super-resolution reconstruction technology, in particular to an enhanced non-local total variational model prior, and applying the prior to single-image super-resolution reconstruction, belonging to digital image processing The direction of image restoration in the field. Background technique [0002] With the vigorous development of computer science and information science, digital visual signals such as images / videos have become more and more widely used in the fields of military, medical, agriculture, and people’s livelihoods. This also makes great contributions to high-resolution images / videos. Application requirements. However, due to the limitations of the capture equipment and shooting environment, the final captured images / videos will inevitably have a certain degree of degradation (such as insufficient resolution, noise pollution, blurring, etc.), which may cause the quality of the c...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T3/40G06T5/00
CPCG06T3/4053G06T5/77
Inventor 任超何小海熊淑华王正勇滕奇志卿粼波
Owner SICHUAN UNIV
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