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Memory-Aware Tiles Workload Balance through Machine-Learnt Complexity Reduction for HEVC

机译:通过降低机器学习的HEVC复杂性来实现内存感知的图块工作负载平衡

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This paper proposes a workload balancing algorithm aiming to speed up the HEVC parallel encoding using Tiles. Different from other literature works, the proposed solution uses static uniform tiling to avoid memory management difficulties that may emerge when dynamic tiling solutions are employed. The proposed algorithm relies on workload distribution history of previous frames to predict the workload distribution of the current frame. Then, it balances the workload among Tiles by employing a workload reduction scheme based on decision trees in the coding process. Experimental tests show that the proposed solution outperforms the standard uniform tiling and is competitive with related works in terms of speedup. Moreover, the solution optimizes resources usage in multiprocessing platforms, presents a negligible coding efficiency loss and reduces memory bandwidth usage by 9.34%.
机译:本文提出了一种工作负载均衡算法,旨在加快使用Tiles进行HEVC并行编码的速度。与其他文献工作不同,所提出的解决方案使用静态统一切片以避免使用动态切片解决方案时可能出现的内存管理困难。所提出的算法依靠先前帧的工作量分布历史来预测当前帧的工作量分布。然后,通过在编码过程中采用基于决策树的工作量减少方案,在Tiles之间平衡工作量。实验测试表明,所提出的解决方案优于标准的均匀平铺,并且在加速方面与相关工作具有竞争力。此外,该解决方案优化了多处理平台中的资源使用率,可忽略不计的编码效率损失,并使内存带宽使用率降低了9.34%。

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