Information-Growth Swin Transformer Network for Image Super-Resolution

ICIP(2022)

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摘要
Super-resolution (SR) reconstruction is a typical ill-posed problem and therefore can be considered as an information-growth process. The regions with dramatic information increase in the stage of extracting depth features often contain more high-frequency details. So giving more attention to these regions will improve the performance of super-resolution reconstruction. Recently, Transformer-based models have shown remarkable performance in SR. However, current Transformer-based models focus on processing for the features of the current layer input and cannot capture the degree of informational growth crossing successive layers. For this reason, we propose an information-growth Swin Transformer network (IGSTN) for single image super-resolution. The IGSTN can adaptively extract information-growth global dependencies to generate spatial attention, and then this spatial attention will be fused with the feature self-attention in the Transformer to produce the final attention, which allows the model to focus more on high-frequency regions and learn more high-frequency details from them. Extensive experimental results on publicly benchmark datasets show the effectiveness of our IGSTN.
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关键词
network,information-growth,super-resolution
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