首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Fast 3D-HEVC encoder algorithm for multiview video plus depth coding
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Fast 3D-HEVC encoder algorithm for multiview video plus depth coding

机译:用于多视点视频和深度编码的快速3D-HEVC编码器算法

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The three-dimensional high efficiency video coding (3D-HEVC) is an extension of the HEVC standard for the compression of the multiview video plus depth (MVD) format. In 3D-HEVC, additional coding tools have been added to HEVC for improving the coding efficiency of the dependent video views and depth maps. Those tools achieve the highest possible coding efficiency, but also bring extremely high computational complexity which limits 3D-HEVC from real-time applications. In this paper, we propose a fast 3D-HEVC encoder algorithm based on the texture video and depth map correlation to reduce MVD coding computational complexity. Since the video texture and depth map represent the same scene at the same time instant (they have the same motion characteristics), it is not efficient to use all the prediction modes in 3D-HEVC mode decision procedure. The basic idea of the algorithm is to utilize the texture video and depth map property of coding information to predict the current CU prediction mode and early skip unnecessary variable-size mode decision. Experimental results demonstrate that the proposed fast 3D-HEVC encoder algorithm can save 75% computational complexity on average, while maintaining almost the same rate distortion (RD) performance as the original 3D-HEVC encoder. (C) 2016 Elsevier GmbH. All rights reserved.
机译:三维高效视频编码(3D-HEVC)是HEVC标准的扩展,用于压缩多视图视频加深度(MVD)格式。在3D-HEVC中,已将其他编码工具添加到HEVC中,以提高从属视频视图和深度图的编码效率。这些工具实现了最高的编码效率,但同时也带来了极高的计算复杂度,从而限制了实时应用程序中的3D-HEVC。在本文中,我们提出了一种基于纹理视频和深度图相关性的快速3D-HEVC编码器算法,以降低MVD编码的计算复杂度。由于视频纹理和深度图在同一时刻表示同一场景(它们具有相同的运动特性),因此在3D-HEVC模式决策过程中使用所有预测模式效率不高。该算法的基本思想是利用编码信息的纹理视频和深度图属性来预测当前的CU预测模式并尽早跳过不必要的可变大小模式决策。实验结果表明,提出的快速3D-HEVC编码器算法可以平均节省75%的计算复杂度,同时保持与原始3D-HEVC编码器几乎相同的速率失真(RD)性能。 (C)2016 Elsevier GmbH。版权所有。

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