高分辨率视觉内容的图像增强

Heunseung Lim, Jaehee Lee, Hyuncheol Kim, Heungmin Oh, J. Paik
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引用次数: 0

摘要

本文提出了一种基于神经网络和指数变换的图像增强方法。在获取图像时,很多成像系统都会出现退化现象,并且由于退化因素的综合作用,周围环境因素所获取的图像质量会下降。或者,有利于后处理的工作,可以通过人为变质直接进行后处理。但是,如果不知道关于这些附加任务的信息,就会出现后处理过程代价昂贵或发生额外退化的问题。为了解决这个问题,本文使用了一个神经网络,该网络通过残差学习来估计需要后处理的图像的伽马映射,最后应用指数变换来执行对比度改进。通过实验结果提出的对比度改进方法与现有方法相比,可以得到色彩失真较小的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Enhancement for High-Resolution Visual Contents
This paper proposes an image enhancement method using gamma neural networks and exponential transformation. When acquiring an image, degradation occurs in very many imaging systems, and the quality of the image acquired by surrounding environmental factors decreases due to the combination of deteriorating elements. Alternatively, work that facilitates post-treatment may be performed by artificially deteriorating for post-treatment directly. However, if the information on these additional tasks is not known, there is a problem that the post-processing process is expensive or additional degradation occurs. To solve this problem, this paper uses a neural network that estimates gamma maps through residual learning for images that require post-processing, and finally applies exponential transformations to perform contrast improvement. The contrast improvement method proposed through the experimental results provides an image with less color distortion compared to the existing method.
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