论文标题
Itinex图像增强基于连续分解的插件框架
Retinex Image Enhancement Based on Sequential Decomposition With a Plug-and-Play Framework
论文作者
论文摘要
Etinex模型是低光图像增强的最具代表性和有效方法之一。但是,Etinex模型并未明确解决噪声问题,并显示出不令人满意的增强结果。近年来,由于表现出色,深度学习模型已被广泛用于弱光图像增强。但是,这些方法有两个局限性:i)只有在有大量标记的数据可用时,才能通过深度学习才能实现理想的性能。但是,策划大量的低/正常光配对数据并不容易。 ii)众所周知,深度学习是黑盒模型[1]。很难解释他们的内部工作机制并了解其行为。在本文中,使用连续的视网膜分解策略,我们基于Itinex理论设计了一个插件框架,以同时增强图像增强和降噪。同时,我们将基于卷积神经网络(CNN)的DeNoiser开发到我们提出的插件框架中,以生成反射率组件。最终增强图像是通过将照明和反射率与伽马校正整合的。提议的插件框架可以促进事后和临时解释性。在不同数据集上进行的广泛实验表明,我们的框架既胜过图像增强和降解的最新方法。
The Retinex model is one of the most representative and effective methods for low-light image enhancement. However, the Retinex model does not explicitly tackle the noise problem, and shows unsatisfactory enhancing results. In recent years, due to the excellent performance, deep learning models have been widely used in low-light image enhancement. However, these methods have two limitations: i) The desirable performance can only be achieved by deep learning when a large number of labeled data are available. However, it is not easy to curate massive low/normal-light paired data; ii) Deep learning is notoriously a black-box model [1]. It is difficult to explain their inner-working mechanism and understand their behaviors. In this paper, using a sequential Retinex decomposition strategy, we design a plug-and-play framework based on the Retinex theory for simultaneously image enhancement and noise removal. Meanwhile, we develop a convolutional neural network-based (CNN-based) denoiser into our proposed plug-and-play framework to generate a reflectance component. The final enhanced image is produced by integrating the illumination and reflectance with gamma correction. The proposed plug-and-play framework can facilitate both post hoc and ad hoc interpretability. Extensive experiments on different datasets demonstrate that our framework outcompetes the state-of-the-art methods in both image enhancement and denoising.