Slice-based parallelization in HEVC encoding: Realizing the potential through efficient load balancing

M. Koziri, Panos K. Papadopoulos, Nikos Tziritas, Antonios N. Dadaliaris, Thanasis Loukopoulos, S. Khan
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引用次数: 19

Abstract

The new video coding standard HEVC (High Efficiency Video Coding) offers the desired compression performance in the era of HDTV and UHDTV, as it achieves nearly 50% bit rate saving compared to H.264/AVC. To leverage the involved computational overhead, HEVC offers three parallelization potentials namely: wavefront parallelization, tile-based and slice-based. In this paper we study slice-based parallelization of HEVC using OpenMP on the encoding part. In particular we delve on the problem of proper slice sizing to reduce load imbalances among threads. Capitalizing on existing ideas for H.264/AVC we develop a fast dynamic approach to decide on load distribution and compare it against an alternative in the HEVC literature. Through experiments with commonly used video sequences, we highlight the merits and drawbacks of the tested heuristics. We then improve upon them for the case of Low-Delay by exploiting GOP structure. The resulting algorithm is shown to clearly outperform its counterparts achieving less than 10% load imbalance in many cases.
HEVC编码中基于片的并行化:通过高效负载平衡实现潜力
新的视频编码标准HEVC(高效率视频编码)提供了HDTV和UHDTV时代所需的压缩性能,因为它与H.264/AVC相比节省了近50%的比特率。为了利用所涉及的计算开销,HEVC提供了三种并行化潜力,即:波前并行化、基于瓷砖的并行化和基于切片的并行化。本文在编码部分研究了基于切片的HEVC并行化。我们特别研究了适当的切片大小问题,以减少线程之间的负载不平衡。利用H.264/AVC的现有思想,我们开发了一种快速动态的方法来决定负载分配,并将其与HEVC文献中的替代方案进行比较。通过对常用视频序列的实验,我们突出了所测试的启发式算法的优点和缺点。然后,我们通过利用GOP结构对低延迟的情况进行改进。结果表明,在许多情况下,该算法明显优于同类算法,实现了小于10%的负载不平衡。
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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