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Effective Data Driven Coding Unit Size Decision Approaches for HEVC INTRA Coding

机译:HEVC INTRA编码的有效数据驱动编码单位大小决策方法

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High Efficiency Video Coding (HEVC) INTRA coding improves compression efficiency by adopting advanced coding technologies, such as multi-level quad-tree block partitioning and up to 35-mode INTRA prediction. However, it significantly increases the coding complexity, memory access, and power consumption, which goes against its widely applications, especially for ultra-high definition and/or mobile video applications. To tackle this problem, we propose effective data driven coding unit (CU) size decision approaches for HEVC INTRA coding, which consists of two stages of support vector machine-based fast INTRA CU size decision schemes at four CU decision layers. At the first stage classification, a three output classifier with offline learning is developed to early terminate the CU size decision or early skip checking the current CU depth. As for the samples that neither early skipped nor early terminated, the second stage of binary classification, which learns online from previous coded frames, is proposed to further refine the CU size decision. Representative features for the CU size decision are explored at different decision layers and stages of classifications. Finally, the optimal parameters derived from the training data are achieved to reasonably allocate complexity among different CU layers at given total rate-distortion degradation constraint. Extensive experiments show that the proposed overall algorithm can achieve 27.95%-80.53% and 52.48% on average complexity reduction for the CU size decision as compared with the original HM16.7 model. Meanwhile, the average Bjonteggard delta peak-signal-to-noise ratio degradation is only -0.08 dB, which is negligible. The overall performance of the proposed algorithm outperforms the state-of-the-art benchmark schemes.
机译:高效视频编码(HEVC)INTRA编码通过采用高级编码技术(例如多级四叉树块划分和多达35种模式的INTRA预测)来提高压缩效率。但是,它显着增加了编码复杂性,内存访问和功耗,这不利于其广泛的应用,尤其是对于超高清和/或移动视频应用。为解决此问题,我们提出了用于HEVC INTRA编码的有效数据驱动编码单元(CU)大小决策方法,该方法由两个阶段的基于支持向量机的快速INTRA CU大小决策方案在四个CU决策层组成。在第一阶段分类中,开发了具有离线学习的三输出分类器,以尽早终止CU大小决定或提前跳过检查当前CU深度。对于既不提早跳过也不提早终止的样本,提出了从先前编码帧在线学习的二进制分类的第二阶段,以进一步完善CU大小决策。在不同的决策层和分类阶段探索CU大小决策的代表性特征。最后,在给定的总速率失真劣化约束条件下,实现了从训练数据中得出的最优参数,以合理地在不同CU层之间分配复杂度。大量的实验表明,与原始的HM16.7模型相比,所提出的总体算法在CU大小决策上,平均复杂度降低了27.95 %-80.53%和52.48%。同时,平均比约特加德河三角洲峰峰值信噪比下降仅为-0.08 dB,可以忽略不计。拟议算法的整体性能优于最新的基准方案。

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