Image super-resolution reconstruction method based on dictionary learning and structure similarity

A technology of super-resolution reconstruction and similar structure, applied in the field of image processing, can solve the problems of low efficiency, inability to maintain high-frequency details of high-resolution images, and large computational complexity, and achieve accurate sparse coefficients, rich content, and high computational complexity. Clear high-resolution images
CN103077511BActive Publication Date: 2015-04-08XIDIAN UNIV

Patent Information

Authority / Receiving Office
CN Β· China
Patent Type
Patents(China)
Current Assignee / Owner
XIDIAN UNIV
Publication Date
2015-04-08

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Abstract

The invention discloses an image super-resolution reconstruction method based on dictionary learning and structure similarity, mainly solving the problem that a reconstructed image based on the prior art has a fuzzy surface and a serious marginal sawtooth phenomenon. The image super-resolution reconstruction method comprises the following implementation steps of: (1) acquiring a training sample pair; (2) learning a pair of high / low-resolution dictionaries by using structural similarity (SSIM) and K-SVD (K-Singular Value Decomposition) methods; (3) working out a sparse expression coefficient of an input low-resolution image block; (4) reestablishing a high-resolution image block Xi by using the high-resolution dictionaries and the sparse coefficient; (5) fusing the high-resolution image block Xi to obtain a high-resolution image X'I subjected to information fusion; (6) obtaining a high-resolution image X according to the high-resolution image X'I; and (7) carrying out high-frequency information enhancement on the high-resolution image X through error compensation to obtain a high-resolution image subjected to high-frequency information enhancement. A simulation experiment shows that the image super-resolution reconstruction method has the advantages of clear image surface and sharpened margin and can be used for image identification and target classification.
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Description

technical field

[0001] The invention belongs to the technical field of image processing, and relates to an image super-resolution reconstruction method, which can be used for super-resolution reconstruction of various natural images, and has a certain inhibitory effect on small noises. Background technique

[0002] In practical applications, due to the limitations of the physical resolution of the imaging system, as well as the influence of many factors such as scene changes and weather conditions, there are often degradation factors such as optical and motion blur, undersampling, and noise in the actual imaging process, resulting in imaging systems that can only get Images or image sequences with poor quality and low resolution usually cannot meet the requirements of practical applications, which brings many difficulties to subsequent image processing, analysis and understanding, and is not conducive to people's correct understanding of the objective world and its laws. [...

Claims

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