You Do Not Need Additional Priors or Regularizers in Retinex-Based Low-Light Image Enhancement

Huiyuan Fu, Wenkai Zheng, Xiangyu Meng, X. Wang, Chuanming Wang, Huadong Ma
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引用次数: 1

Abstract

Images captured in low-light conditions often suffer from significant quality degradation. Recent works have built a large variety of deep Retinex-based networks to enhance low-light images. The Retinex-based methods require decomposing the image into reflectance and illumination components, which is a highly ill-posed problem and there is no available ground truth. Previous works addressed this problem by imposing some additional priors or regularizers. However, finding an effective prior or regularizer that can be applied in various scenes is challenging, and the performance of the model suffers from too many additional constraints. We propose a contrastive learning method and a self-knowledge distillation method for Retinex decomposition that allow training our Retinex-based model without elaborate hand-crafted regularization functions. Rather than estimating reflectance and illuminance images and representing the final images as their element-wise products as in previous works, our regularizer-free Retinex decomposition and synthesis network (RFR) extracts reflectance and illuminance features and synthesizes them end-to-end. In addition, we propose a loss function for contrastive learning and a progressive learning strategy for self-knowledge distillation. Extensive experimental results demonstrate that our proposed methods can achieve superior performance compared with state-of-the-art approaches.
在基于视黄醇的微光图像增强中,您不需要额外的先验或正则器
在弱光条件下拍摄的图像通常会出现明显的质量下降。最近的研究已经建立了大量基于深度视黄醇的网络来增强弱光图像。基于retexx的方法需要将图像分解为反射率和光照分量,这是一个高度不适定的问题,并且没有可用的地面真值。以前的工作通过施加一些额外的先验或正则化来解决这个问题。然而,找到一个可以应用于各种场景的有效先验或正则化器是具有挑战性的,并且模型的性能受到太多额外约束的影响。我们提出了一种对比学习方法和一种自知识蒸馏方法,用于Retinex分解,允许训练我们基于Retinex的模型,而无需精心制作手工正则化函数。我们的无正则化的Retinex分解和合成网络(RFR)提取反射率和照度特征并端到端合成,而不是像以前的工作那样估计反射率和照度图像并将最终图像表示为它们的元素产品。此外,我们提出了一种用于对比学习的损失函数和一种用于自我知识升华的渐进式学习策略。大量的实验结果表明,与现有的方法相比,我们提出的方法可以取得更好的性能。
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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