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Fuzzy SVM-Based Coding Unit Decision in HEVC

机译:HEVC中基于模糊SVM的编码单元决策

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摘要

The latest video compression standard, High Efficiency Video Coding (HEVC), has greatly improved the coding efficiency compared to the predecessor H.264/AVC. However, equipped with the quadtree structure of coding tree unit partition and other sophisticated coding tools, HEVC brings a significant increase in the computational complexity. To address this issue, a coding unit (CU) decision method based on fuzzy support vector machine (SVM) is proposed for rate-distortion-complexity (RDC) optimization, where the process of CU decision is formulated as a cascaded multi-level classification task. The optimal feature set is selected according to a defined misclassification cost and a risk area is introduced for an uncertain classification output. To further improve the RDC performance, different regulation parameters in SVM are adopted and outliers in training samples are eliminated. Additionally, the proposed CU decision method is incorporated into a joint RDC optimization framework, where the width of risk area is adaptively adjusted to allocate flexible computational complexity to different CUs, aiming at minimizing computational complexity under a configurable constraint in terms of RD performance degradation. Experimental results show that the proposed approach can reduce 58.9% and 55.3% computational complexity on average with the values of Bjønteggard delta peak-signal-to-noise ratio as -0.075 dB and -0.085 dB and the values of Bjøntegaard delta bit rate as 2.859% and 2.671% under low delay P and random access configurations, respectively, which has outperformed the state-of-the-art fast algorithms based on statistical information and machine learning.
机译:与之前的H.264 / AVC相比,最新的视频压缩标准高效视频编码(HEVC)大大提高了编码效率。但是,HEVC配备了编码树单元分区的四叉树结构和其他复杂的编码工具,极大地增加了计算复杂性。为了解决这个问题,提出了一种基于模糊支持向量机(SVM)的编码单元决策方法,用于速率-失真-复杂度(RDC)优化,将决策过程定义为级联的多级分类。任务。根据定义的误分类成本选择最佳特征集,并为不确定的分类输出引入风险区域。为了进一步提高RDC性能,在SVM中采用了不同的调节参数,并消除了训练样本中的异常值。此外,将拟议的CU决策方法并入联合RDC优化框架中,其中自适应调整风险区域的宽度,以将灵活的计算复杂度分配给不同的CU,旨在在RD性能降级的可配置约束下将计算复杂度降至最低。实验结果表明,该方法平均可降低58.9%和55.3%的计算复杂度,Bjønteggard峰值信噪比为-0.075 dB和-0.085 dB,Bjøntegaard增量比特率为2.859。分别在低延迟P和随机访问配置下的%和2.671%,这已经超过了基于统计信息和机器学习的最新的快速算法。

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