DuINet: A dual-branch network with information exchange and perceptual loss for enhanced image denoising

Image denoising is a fundamental task in image processing and low-level computer vision, often necessitating a delicate balance between noise removal and the preservation of fine details. In recent years, deep learning approaches, particularly those utilizing various neural network architectures, ha...

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Veröffentlicht in:Digital signal processing 2025-01, Vol.156, p.104835, Article 104835
Hauptverfasser: Wang, Xiaotong, Tang, Yibin, Yao, Cheng, Gao, Yuan, Chen, Ying
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Sprache:eng
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Zusammenfassung:Image denoising is a fundamental task in image processing and low-level computer vision, often necessitating a delicate balance between noise removal and the preservation of fine details. In recent years, deep learning approaches, particularly those utilizing various neural network architectures, have shown significant promise in addressing this challenge. In this study, we propose DuINet, a novel dual-branch network specifically designed to capture complementary aspects of image information. DuINet integrates an information exchange module that facilitates effective feature sharing between the branches, and it incorporates a perceptual loss function aimed at enhancing the visual quality of the denoised images. Extensive experimental results demonstrate that DuINet surpasses existing dual-branch models and several state-of-the-art convolutional neural network (CNN)-based methods, particularly under conditions of severe noise where preserving fine details and textures is critical. Moreover, DuINet maintains competitive performance in terms of the LPIPS index when compared to deeper or larger networks such as Restormer and MIRNet, underscoring its ability to deliver high visual quality in denoised images. •Introducing DuINet, a meticulously designed dual-branch network for image denoising.•DuINet employs an information exchange module that facilitates and reuses feature flow.•This network captures different aspects of image features for optimal performance.•Experiments show its superior performance, under a perceptual measure, to existing dual-branch models.•DuINet achieves competitive performance against larger and deeper networks.
ISSN:1051-2004
DOI:10.1016/j.dsp.2024.104835