Motion Estimation in HEVC/H.265: Metaheuristic Approach to Improve the Efficiency

Khwaja Humble Hassan, S. Butt
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引用次数: 1

Abstract

An ever increasing use of digital video applications such as video telephony, broadcast and the storage of high and ultra-high definition videos has steered the development of video coding standards. The state of the art video coding standard is High Efficiency Video Coding (HEVC) or otherwise known as H.265. It promises to be 50 percent more efficient than the previous video coding standard H.264. Ultimately, H.265 provides significant improvement in compression at the expense of computational complexity. HEVC encoder is very complex and 50 percent of the encoding consists of Motion Estimation (ME). It uses a Test Zone (TZ) fast search algorithm for its motion estimation, which compares a block of pixels with a few selected blocks in the search region of a referenced frame. However, the encoding time is not suitable to meet the needs of real time video applications. So, there is a requirement to improve the search algorithm and to provide comparable results to TZ search to save a substantial amount of time. In our paper, we aim to study the effects of a meta-heuristic algorithm on motion estimation. One such suitable algorithm for this task is the Firefly Algorithm (FA). FA is inspired by the social behavior of fireflies and is generally used to solve optimization problems. Our results show that implementing FA for ME saves a considerable amount of time with a comparable encoding efficiency.
HEVC/H中的运动估计。265:提高效率的元启发式方法
越来越多的数字视频应用,如视频电话、广播以及高清和超高清视频的存储,引导了视频编码标准的发展。最先进的视频编码标准是高效视频编码(HEVC),也就是众所周知的H.265。它有望比之前的视频编码标准H.264提高50%的效率。最终,H.265以牺牲计算复杂度为代价在压缩方面提供了显著的改进。HEVC编码器非常复杂,50%的编码由运动估计(ME)组成。它使用了一个测试区域(Test Zone, TZ)快速搜索算法来进行运动估计,该算法将一个像素块与参考帧的搜索区域中的几个选定块进行比较。但是,编码时间不适合满足实时视频应用的需要。因此,需要改进搜索算法,并提供与TZ搜索相当的结果,以节省大量的时间。在本文中,我们旨在研究一种元启发式算法对运动估计的影响。萤火虫算法(Firefly algorithm, FA)就是其中一种合适的算法。遗传算法的灵感来自于萤火虫的社会行为,通常用于解决优化问题。我们的结果表明,为ME实现FA可以节省大量的时间,并且具有相当的编码效率。
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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CiteScore
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