HEVC中基于超分辨率的编码效率改进方法

Katsuyuki Yoshizuka, Yuzuki Kashiwagi, G. Fujita
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引用次数: 0

摘要

最近,4K和8K等高分辨率视频越来越流行,导致视频数据量大幅增加。因此,需要更有效的视频压缩技术。解决这个问题的一种方法是对视频图像进行下采样以减少信息量,然后进行编码。采用超分辨率或其他方法进行上采样,恢复原始分辨率,有望提高编码效率。然而,超分辨率不一定产生比其他分辨率更好的结果。由于传统的超分辨率处理在学习过程中没有考虑视频编码处理带来的退化。因此,我们提出了一种学习超分辨率的方法,该方法考虑了下采样和视频编码处理引起的退化。因此,我们可以进行适合视频编码的超分辨率处理,并将编码效率提高7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement of Coding Efficiency Method Based on Super-Resolution by Learing Decoded Images in HEVC
Recently, high-resolution videos such as 4K and 8K have become increasingly popular, leading to a significant increase in video data size. Consequently, techniques for more efficient video compression are needed. One approach to address this issue is to downsample the video image to reduce the amount of information and then perform encoding. Upsampling is performed using super-resolution or other methods to restore the original resolution, which is expected to improve coding efficiency. However, super-resolution may not necessarily produce superior results compared to other. As conventional superresolution processing does not consider degradation caused by video encoding processing in the learning process. Therefore, we propose a method of learning super-resolution that considers the degradation caused by both downsampling and video encoding processing. As a result, we can perform super-resolution processing suitable for video encoding and improve encoding efficiency by up to 7%.
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