Learning With Self-Calibrator for Fast and Robust Low-Light Image Enhancement

IF 18.6
Long Ma;Tengyu Ma;Chengpei Xu;Jinyuan Liu;Xin Fan;Zhongxuan Luo;Risheng Liu
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Abstract

Convolutional Neural Networks (CNNs) have shown significant success in the low-light image enhancement task. However, most of existing works encounter challenges in balancing quality and efficiency simultaneously. This limitation hinders practical applicability in real-world scenarios and downstream vision tasks. To overcome these obstacles, we propose a Self-Calibrated Illumination (SCI) learning scheme, introducing a new perspective to boost the model’s capability. Based on a weight-sharing illumination estimation process, we construct an embedded self-calibrator to accelerate stage-level convergence, yielding gains that utilize only a single basic block for inference, which drastically diminishes computation cost. Additionally, by introducing the additivity condition on the basic block, we acquire a reinforced version dubbed SCI++, which disentangles the relationship between the self-calibrator and illumination estimator, providing a more interpretable and effective learning paradigm with faster convergence and better stability. We assess the proposed enhancers on standard benchmarks and in-the-wild datasets, confirming that they can restore clean images from diverse scenes with higher quality and efficiency. The verification on different levels of low-light vision tasks shows our applicability against other methods.
用自校正器学习快速鲁棒弱光图像增强
卷积神经网络(cnn)在微光图像增强任务中取得了显著的成功。然而,现有的大部分工作都面临着平衡质量和效率的挑战。这一限制阻碍了在现实世界场景和下游视觉任务中的实际应用。为了克服这些障碍,我们提出了一种自校准照明(SCI)学习方案,引入了一个新的视角来提高模型的能力。基于权重共享照明估计过程,我们构建了一个嵌入式自校准器来加速阶段级收敛,产生仅利用单个基本块进行推理的收益,从而大大降低了计算成本。此外,通过在基本块上引入可加性条件,我们获得了一个增强版本,称为SCI++,它解除了自校正器和照明估计器之间的关系,提供了一个更具可解释性和有效性的学习范式,具有更快的收敛速度和更好的稳定性。我们在标准基准和野外数据集上评估了所提出的增强器,确认它们可以以更高的质量和效率从不同的场景中恢复干净的图像。在不同层次的微光视觉任务上的验证表明了我们的方法相对于其他方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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