DWTA-Net is a two-stage recurrent neural network for low-light video enhancement that combines Mamba-based local restoration with dynamic optical-flow-guided temporal aggregation and a texture-adaptive loss to suppress extreme noise.
Dynamic Weight-based Temporal Aggregation for Low-light Video Enhancement Under Extreme Noise
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abstract
Low-light video enhancement (LLVE) is challenging due to noise, low contrast, and color degradation. While learning-based methods enable fast inference, they often fail under heavy real-world noise because they do not sufficiently exploit long-term temporal cues. We propose DWTA-Net, a novel deep-learning recurrent LLVE framework with a recurrent design. DWTA-Net adopts an integrated two-stage architecture: Stage I restores local structure and color via multi-frame alignment for temporally consistent Mamba-based enhancement, while Stage II performs recurrent refinement using a novel dynamic weight-based temporal aggregation guided by optical flow, functioning as a recurrent denoiser that adapts to motion. We further introduce a texture-adaptive loss that preserves fine details in textured regions while suppressing noise in homogeneous areas. Experiments on real-world low-light footage show that DWTA-Net achieves stronger noise suppression and fewer artifacts, delivering superior visual quality compared with state-of-the-art methods.
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cs.CV 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
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Dynamic Weight-based Temporal Aggregation for Low-light Video Enhancement Under Extreme Noise
DWTA-Net is a two-stage recurrent neural network for low-light video enhancement that combines Mamba-based local restoration with dynamic optical-flow-guided temporal aggregation and a texture-adaptive loss to suppress extreme noise.