Multi-scale Deep Curve Estimation for Low-light Image Enhancement

Xin Zhang, Xia Wang, Gangcheng Jiao, Ye Yang, Hongchang Cheng, Bo Yan
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Abstract

Due to the limitation of the device, pictures taken in low-light environment usually consist of unpleasant deterioration, such as low contrast and color distortion. In this paper, we propose a Multi-scale Deep Curve Estimation network (MSDCE) for low-light image enhancement, which formulates the single low-light image enhancement task as a pixel-wise curve estimation by paired learning. To impose more priors of low-light regions, we propose an inverse illuminance map as part of the Curve Estimation network input. The curve estimation network backbone is composed of multi-scale modules which learns information from multi-scale feature streams and ensures the information exchange across different scales. Compared with several state-of-the-art methods, our method is significantly better. From the perspective of visual evaluation, our MSDCE can effectively improve the contrast and illumination of the image, and ensure the color fidelity of the image. CCS CONCEPTS • Computing methodologies • Artificial intelligence • Computer vision • Computer vision problems • Reconstruction
低光图像增强的多尺度深度曲线估计
由于设备的限制,在弱光环境下拍摄的照片通常会出现令人不快的劣化,比如对比度低、色彩失真。本文提出了一种用于弱光图像增强的多尺度深度曲线估计网络(MSDCE),该网络通过配对学习将单个弱光图像增强任务描述为逐像素曲线估计。为了对低光区域施加更多的先验,我们提出了一个逆照度图作为曲线估计网络输入的一部分。曲线估计网络骨干网由多尺度模块组成,从多尺度特征流中学习信息,保证了信息在不同尺度间的交换。与几种最先进的方法相比,我们的方法明显更好。从视觉评价的角度来看,我们的MSDCE可以有效地提高图像的对比度和照度,保证图像的色彩保真度。CCS概念•计算方法•人工智能•计算机视觉•计算机视觉问题•重建
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