Image Coding with Neural Network-Based Colorization

Diogo Lopes, J. Ascenso, Catarina Brites, Fernando Pereira
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Abstract

Automatic colorization is a process with the objective of inferring the color of grayscale images. This process is frequently used for artistic purposes and to restore the color in old or damaged images. Motivated by the excellent results obtained with deep learning-based solutions in the area of automatic colorization, this paper proposes an image coding solution integrating a deep learning-based colorization process to estimate the chrominance components based on the decoded luminance which is regularly encoded with a conventional image coding standard. In this case, the chrominance components are not coded and transmitted as usual, notably after some subsampling, as only some color hints, i.e. chrominance values for specific pixel locations, may be sent to the decoder to help it creating more accurate colorizations. To boost the colorization and final compression performance, intelligent ways to select the color hints are proposed. Experimental results show performance improvements with the increased level of intelligence in the color hints extraction process and a good subjective quality of the final decoded (and colorized) images.
基于神经网络着色的图像编码
自动着色是一种以推断灰度图像颜色为目的的过程。这个过程经常用于艺术目的和恢复旧的或损坏的图像的颜色。鉴于基于深度学习的解决方案在自动着色领域取得的优异效果,本文提出了一种集成基于深度学习的着色过程的图像编码解决方案,该方案基于解码后的亮度估计颜色分量,并使用常规图像编码标准对亮度进行定期编码。在这种情况下,色度分量不会像往常一样编码和传输,特别是在一些子采样之后,因为只有一些颜色提示,即特定像素位置的色度值,可能会被发送到解码器,以帮助它创建更准确的着色。为了提高图像的着色性能和最终压缩性能,提出了一种选择颜色提示的智能方法。实验结果表明,在颜色提示提取过程中,随着智能水平的提高,性能有所提高,最终解码(和着色)图像的主观质量也很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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