The paper introduces CWT-Net, a super-resolution (SR) model that effectively captures high-frequency details in pathology images across various scales, expediting the learning process for SR tasks. CWT-Net consists of two branches: the Super-resolution Branch (SR Branch) processes low-resolution (LR) images by feature extraction and upsampling to produce high-quality SR results, while the Wavelet Transform Branch (WT Branch) extracts high-frequency details from high-resolution (HR) images across various scales using wavelet transforms. The Transformer module progressively merges information from both branches, enhancing the primary functions of the SR branch to get the high-level result.
The authors have designed a specialized wavelet reconstruction module to enhance wavelet information at a single scale, allowing for the utilization of additional cross-scale information while adhering to the SISR working paradigm. This module endows the SR network with the advantages of both working paradigms, eliminating the need for extensive information construction.
The authors have also curated the benchmark dataset MLCamSR, consisting of sampling regions with three levels of real sampled images, enabling CWT-Net to be trained with undegraded cross-scale information, further enhancing its performance.
Experimental results demonstrate that CWT-Net significantly outperforms state-of-the-art methods in both performance and visualization evaluations and can substantially boost the accuracy of image diagnostic networks.
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