Symmetry (May 2024)

A Novel Self-Adaptive Deformable Convolution-Based U-Net for Low-Light Image Denoising

  • Hua Wang,
  • Jianzhong Cao,
  • Huinan Guo,
  • Cheng Li

DOI
https://doi.org/10.3390/sym16060646
Journal volume & issue
Vol. 16, no. 6
p. 646

Abstract

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Capturing images under extremely low-light conditions usually suffers from various types of noise due to the limited photon and low signal-to-noise ratio (SNR), which makes low-light denoising a challenging task in the field of imaging technology. Nevertheless, existing methods primarily focus on investigating the precise modeling of real noise distributions while neglecting improvements in the noise modeling capabilities of learning models. To address this situation, a novel self-adaptive deformable-convolution-based U-Net (SD-UNet) model is proposed in this paper. Firstly, deformable convolution is employed to tackle noise patterns with different geometries, thus extracting more reliable noise representations. After that, a self-adaptive learning block is proposed to enable the network to automatically select appropriate learning branches for noise with different scales. Finally, a novel structural loss function is leveraged to evaluate the difference between denoised and clean images. The experimental results on multiple public datasets validate the effectiveness of the proposed method.

Keywords