光场压缩中的快速深度决定

Hadi Amirpour, A. Pinheiro, Manuela Pereira, M. Ghanbari
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引用次数: 2

摘要

基于伪序列的光场压缩方法是一种高效的光场压缩方法。他们使用最先进的视频编码器,如HEVC来编码图像视图。HEVC利用了编码树单元(CTU)结构,该结构灵活高效,但计算量大。每个CTU在不同的深度,预测和转换模式下进行检查,以找到最优的编码结构。有效地预测编码单元的深度可以显著降低复杂度。本文提出了一种新的深度判定方法,该方法利用空间距离较近的参考图像中先前编码的同位编码单元的最小值和最大值。为每个编码单元计算这些共置cpu的最小和最大深度,并用于限制当前编码单元的深度。实验结果表明,串行和并行处理分别减少了55%和85%的编码时间,而退化可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Depth Decision in Light Field Compression
Pseudo-sequence based light field compression methods are a highly efficient solution to compress light field images. They use state-of-the-art video encoders like HEVC to encode the image views. HEVC exploits Coding Tree Unit (CTU) structure which is flexible and highly efficient but it is computationally demanding. Each CTU is examined in various depths, prediction and transformation modes to find an optimal coding structure. Efficiently predicting depth of the coding units can reduce complexity significantly. In this paper, a new depth decision method is introduced which exploits the minimum and maximum of previously encoded co-located coding units in spatially closer reference images. Minimum and maximum depths of these co-located CTUs are computed for each coding unit and are used to limit the depth of the current coding unit. Experimental results show up to 55% and 85% encoding time reduction with serial and parallel processing respectively, at negligible degradations.
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