首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Multi-level rate-constrained successive elimination algorithm tailored to suboptimal motion estimation in HEVC
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Multi-level rate-constrained successive elimination algorithm tailored to suboptimal motion estimation in HEVC

机译:HEVC中次优势估计量身定制的多级速率约束连续消除算法

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摘要

In the context of motion estimation for video coding, successive elimination algorithms (SEAs) significantly reduce the number of candidates evaluated during motion estimation without altering the resulting optimal motion vector. Nevertheless, SEA is often only used in conjunction with exhaustive search algorithms (e.g., full search). In this paper, we combine the multi-level successive elimination algorithm (ML-SEA) and the rate-constrained successive elimination algorithm (RCSEA) and show that they can be advantageously applied to suboptimal search algorithms. We demonstrate that the savings brought about by the new multi-level RCSEA (ML-RCSEA) outweigh the pre-computational costs of this approach for the Test Zonal (TZ) Search algorithm found in the HM reference encoder. We propose a novel multi-level composition pattern for performing RCSEA on an asymmetric partitioning. We introduce a double-check mechanism for RCSEA, and show that on average, it avoids computing 71% of motion vector (MV) costs. We also apply the proposed ML-RCSEA to bi-predictive refinement search and leverage a cost-based search ordering to remove 56% of error metric computations, on average. When compared to the HM reference encoder, our experiments show that the proposed solution reduces the TZ Search time by approximately 45%, contributing to an average encoding time reduction of about 7%, without increasing the Bjontegaard delta rate (BD-Rate).
机译:在视频编码的运动估计的背景下,连续消除算法(海)显着减少运动估计期间评估的候选的数量而不改变所得到的最佳运动向量。尽管如此,海洋往往仅与详尽的搜索算法结合使用(例如,完全搜索)。在本文中,我们将多级连续消除算法(ML-SEA)和速率约束连续消除算法(RCSEA)组合,并表明它们可以有利地应用于次优搜索算法。我们证明,新的多级RCSEA(ML-RCSEA)带来的节省量超过了HM参考编码器中发现的测试区(TZ)搜索算法的这种方法的预计算成本。我们提出了一种新的多级组成模式,用于对不对称分区进行RCSEA。我们介绍了RCSEA的双重检查机制,并显示平均值,避免计算71%的运动矢量(MV)成本。我们还将提议的ML-RCSEA应用于双预测性改进搜索,并利用基于成本的搜索顺序,平均删除56%的错误度量计算。与HM参考编码器相比,我们的实验表明,所提出的解决方案将TZ搜索时间降低约45%,导致平均编码时间减少约7%,而不增加Bjontegaard Delta速率(BD速率)。

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