2024
DOI: 10.1038/s41598-024-60139-x
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An efficient lightweight network for image denoising using progressive residual and convolutional attention feature fusion

Wang Tiantian,
Zhihua Hu,
Yurong Guan

Abstract: While deep learning has become the go-to method for image denoising due to its impressive noise removal capabilities, excessive network depth often plagues existing approaches, leading to significant computational burdens. To address this critical bottleneck, we propose a novel lightweight progressive residual and attention mechanism fusion network that effectively alleviates these limitations. This architecture tackles both Gaussian and real-world image noise with exceptional efficacy. Initiated through dense… Show more

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