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图学学报

• 图像处理与计算机视觉 • 上一篇    下一篇

极端低光情况下的图像增强方法

  

  1. (河海大学计算机与信息学院,江苏南京 211100)
  • 出版日期:2020-08-31 发布日期:2020-08-22

The method of image enhancement under extremely low-light conditions

  1. (College of Computer and Information, Hohai University, Nanjing Jiangsu 211100, China)
  • Online:2020-08-31 Published:2020-08-22

摘要: 针对极端低光情况下的图像增强问题,提出一种基于编码解码网络和残差网络的
端到端的全卷积网络模型。设计一个包括编码解码网络和精细网络2 部分的端到端的全卷积网
络模型作为转换网络,直接处理短曝光图像的光传感器数据得到RGB 格式的输出图像。该网
络包含对抗思想、残差结构和感知损失,先通过对极低光图像编码解码重构图像的低频信息,
之后将重构的低频信息输入残差网络中进而重构出图像的高频信息。在SID 数据集上进行实验
验证,结果表明,该方法有效地提高了极端低光情况下拍摄得到的图像进行低光增强之后的视
觉效果,增加了细节表达,使得图像中物体的纹理更加清楚和边缘更加分明。

关键词: 深度学习, 卷积神经网络, 极低光图像, 生成对抗网络, 图像增强

Abstract: The process of obtaining the image with normal exposure time from the image with short
exposure time photographed in extreme low-light conditions is defined as the image enhancement
under extreme low-light conditions. In this paper, we proposed a method for the enhancement of the
extreme low-light image based on the encoding-and-decoding network architecture and residual block.
We designed an end-to-end fully convolutional network as the translation model, which consists of
two parts: the encoding-and-decoding network and refinement network. The input data of the
translation model is the extreme low-light raw data captured with short exposure time in extreme
low-light conditions, and the output data is the image in RGB format. Firstly, the low-frequency
information of the image was reconstructed via U-net and then was input into the residual network to
reconstruct the high-frequency information of the image. Through the experiments carried out on the
SID data set and comparisons with previous research results, it is proved that the method described in
this paper can effectively enhance the visual effect of the images captured under extreme low-light
conditions and improved with low-light enhancement, and increase the expression of the image
details.

Key words: deep learning, convolutional neural network, extremely low-light image, generative
adversarial,
image enhancement