TY - JOUR
T1 - QMSANet
T2 - A quaternion multi-scale attention network for robust color image denoising
AU - Liu, Yi
AU - Xie, Qi
AU - Guo, Yu
AU - Chen, Guoqing
AU - Wu, Boying
AU - Meng, Deyu
AU - Morel, Jean Michel
AU - Jin, Qiyu
AU - Kwok-Po Ng, Michael
N1 - Publisher Copyright:
© 2026 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026/11
Y1 - 2026/11
N2 - Existing color image denoising methods often fail to adequately capture correlations among RGB channels, leading to structural blurring and the loss of fine details. To overcome this limitation, we propose QMSANet, a Quaternion Multi-Scale Attention Network designed to explicitly model inter-channel correlations (i.e., correlations among RGB channels) throughout the denoising process, thereby enabling stronger noise suppression and more faithful detail reconstruction. Our network is built around three complementary modules: the Quaternion Multi-Scale Sparse Block (QMSB), the Quaternion Stacked Enhancement Block (QSEB), and the Lightweight Quaternion Attention Block (LQAB). These modules form a cohesive processing pipeline. Specifically, the QMSB first extracts sparse multi-scale features, allowing the model to capture contextual information at different granularities. These features are then refined by the QSEB, which enhances deep inter-channel interactions and stabilizes feature propagation to improve representational quality. Finally, the LQAB adapts the refined features through a lightweight attention strategy that selectively highlights the most informative responses with minimal computational overhead. Together, these modules operate sequentially to address key denoising challenges, improving efficiency while reducing incomplete noise removal, detail loss, and edge artifacts. Extensive experiments on standard color image denoising benchmarks show that QMSANet consistently outperforms state-of-the-art models under both synthetic and real-world noise. Moreover, although blind denoisers typically underperform their non-blind counterparts, our blind variant (i.e., QMSANet-B) still surpasses most representative methods.
AB - Existing color image denoising methods often fail to adequately capture correlations among RGB channels, leading to structural blurring and the loss of fine details. To overcome this limitation, we propose QMSANet, a Quaternion Multi-Scale Attention Network designed to explicitly model inter-channel correlations (i.e., correlations among RGB channels) throughout the denoising process, thereby enabling stronger noise suppression and more faithful detail reconstruction. Our network is built around three complementary modules: the Quaternion Multi-Scale Sparse Block (QMSB), the Quaternion Stacked Enhancement Block (QSEB), and the Lightweight Quaternion Attention Block (LQAB). These modules form a cohesive processing pipeline. Specifically, the QMSB first extracts sparse multi-scale features, allowing the model to capture contextual information at different granularities. These features are then refined by the QSEB, which enhances deep inter-channel interactions and stabilizes feature propagation to improve representational quality. Finally, the LQAB adapts the refined features through a lightweight attention strategy that selectively highlights the most informative responses with minimal computational overhead. Together, these modules operate sequentially to address key denoising challenges, improving efficiency while reducing incomplete noise removal, detail loss, and edge artifacts. Extensive experiments on standard color image denoising benchmarks show that QMSANet consistently outperforms state-of-the-art models under both synthetic and real-world noise. Moreover, although blind denoisers typically underperform their non-blind counterparts, our blind variant (i.e., QMSANet-B) still surpasses most representative methods.
KW - Attention
KW - Color image denoising
KW - Multi-scale
KW - Quaternion
UR - https://www.scopus.com/pages/publications/105039687674
U2 - 10.1016/j.neunet.2026.109091
DO - 10.1016/j.neunet.2026.109091
M3 - 文章
AN - SCOPUS:105039687674
SN - 0893-6080
VL - 203
JO - Neural Networks
JF - Neural Networks
M1 - 109091
ER -