Cross-SRN: Structure-Preserving Super-Resolution Network with Cross Convolution
Yuqing Liu, Qi Jia, Xin Fan, Shanshe Wang, Siwei Ma, Wen Gao

TL;DR
Cross-SRN is a novel super-resolution network that effectively preserves structural details by integrating cross convolution and multi-scale feature fusion, leading to superior image restoration performance.
Contribution
The paper introduces a structure-preserving super-resolution network using cross convolution and hierarchical feature fusion, which enhances edge and structural detail recovery.
Findings
Achieves competitive or superior super-resolution performance.
Effectively preserves edges and structural details.
Outperforms state-of-the-art methods on selected benchmarks.
Abstract
It is challenging to restore low-resolution (LR) images to super-resolution (SR) images with correct and clear details. Existing deep learning works almost neglect the inherent structural information of images, which acts as an important role for visual perception of SR results. In this paper, we design a hierarchical feature exploitation network to probe and preserve structural information in a multi-scale feature fusion manner. First, we propose a cross convolution upon traditional edge detectors to localize and represent edge features. Then, cross convolution blocks (CCBs) are designed with feature normalization and channel attention to consider the inherent correlations of features. Finally, we leverage multi-scale feature fusion group (MFFG) to embed the cross convolution blocks and develop the relations of structural features in different scales hierarchically, invoking a…
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Taxonomy
MethodsConvolution
