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Fast HEVC Transrating using Random Forests

机译:使用随机森林进行快速HEVC转换

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摘要

This article describes a fast transrating solution for HEVC based on classification and machine learning techniques. Two classifiers are trained to predict the range of CTU quadtree depths that will be searched to find the best CTU partitioning. Three approaches are proposed for reducing the number of features used by the classifiers, two based on feature selection, and one based on feature transformation using autoencoders. A full transrating framework based on x265 is built for model training and evaluation. Experimental results using the x265 encoder show that an average 41.81% computational complexity reduction can be achieved at the cost of a tolerable 0.29% Bjontegaard-Delta bitrate, outperforming competing methods.
机译:本文介绍了一种基于分类和机器学习技术的HEVC快速转换解决方案。训练了两个分类器,以预测将被搜索以找到最佳CTU分区的CTU四叉树深度范围。提出了三种减少分类器使用的特征数量的方法,两种基于特征选择,一种基于使用自动编码器的特征变换。建立了基于x265的完整转换框架,用于模型训练和评估。使用x265编码器的实验结果表明,以可容忍的0.29%Bjontegaard-Delta比特率为代价,可以平均降低41.81%的计算复杂度,胜过其他竞争方法。

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