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Metropolis Theorem and Its Applications in Single Image Detail Enhancement

The proposed method enhances image detail by optimizing residual feature matching through a thermodynamic process, achieving superior performance compared to traditional local and global filter-based methods.

Year
2023
Venue
arXiv 2023
Authors
5
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2302.09762ARXIV-DEFAULT
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Abstract

Traditional image detail enhancement is local filter-based or global filter-based. In both approaches, the original image is first divided into the base layer and the detail layer, and then the enhanced image is obtained by amplifying the detail layer. Our method is different, and its innovation lies in the special way to get the image detail layer. The detail layer in our method is obtained by updating the residual features, and the updating mechanism is usually based on searching and matching similar patches. However, due to the diversity of image texture features, perfect matching is often not possible. In this paper, the process of searching and matching is treated as a thermodynamic process, where the Metropolis theorem can minimize the internal energy and get the global optimal solution of this task, that is, to find a more suitable feature for a better detail enhancement performance. Extensive experiments have proven that our algorithm can achieve better results in quantitative metrics testing and visual effects evaluation. The source code can be obtained from the link.

Authors

5