Convolutional Neural Network-based Image Restoration (CNNIR)

Zheng-Jie Huang, Wei-Hao Lu, Brijesh Patel, Po-Yan Chiu, Tz-Yu Yang, Hao Jian Tong, V. Bučinskas, M. Greitans, P. Lin
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Abstract

In this era of automation, image processing is an indispensable part of computer vision. Many computer vision approaches in the industry depend on a relatively bright environment. Under low light source conditions, the distribution of image information is too concentrated in specific intensity ranges due to the color factor of the subject itself, resulting in noise and contrast loss. Enhancing contrast is a crucial step in improving the quality of the image and showing visible details. This study proposes a method based on a convolutional neural network (CNN), using the pixel difference between paired images, called a motion matrix, as an annotation for low-contrast images. The image's motion vector is predicted after the neural network model has been trained to produce the low-contrast enhanced image. Then, the proposed model is compared with the Low-Light image Enhancement (LLNet), Multi-Scale Retinex Color Restoration (MSRCR), and Fuzzy Automatic Cluster Enhancement (FACE) approaches. The effectiveness of the proposed method was further evaluated by comparing several quality indicators, including peak signal-to-noise ratio, structural similarity, root-mean-square-error, root-mean-square-contrast and computation time efficiency.
基于卷积神经网络的图像恢复
在这个自动化的时代,图像处理是计算机视觉不可缺少的一部分。业界的许多计算机视觉方法依赖于相对明亮的环境。在低光源条件下,由于被摄物本身的色彩因素,图像信息的分布过于集中在特定的强度范围内,从而产生噪声和对比度损失。增强对比度是提高图像质量和显示可见细节的关键步骤。本研究提出了一种基于卷积神经网络(CNN)的方法,使用成对图像之间的像素差(称为运动矩阵)作为低对比度图像的注释。在训练神经网络模型生成低对比度增强图像后,预测图像的运动向量。然后,将该模型与微光图像增强(LLNet)、多尺度视网膜颜色恢复(MSRCR)和模糊自动聚类增强(FACE)方法进行了比较。通过比较峰值信噪比、结构相似度、均方根误差、均方根对比度和计算时间效率等质量指标,进一步评价了该方法的有效性。
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