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IMPROVED ENTROPY CODING IN IMAGE AND VIDEO COMPRESSION USING MACHINE LEARNING

机译:使用机器学习改进图像和视频压缩中的熵编码

摘要

Machine learning is used to refine a probability distribution for entropy coding video or image data. A probability distribution is determined for symbols associated with a video block (e.g., quantized transform coefficients, such as during encoding, or syntax elements from a bitstream, such as during decoding), and a set of features is extracted from video data associated with the video block and/or neighbor blocks. The probability distribution and the set of features are then processed using machine learning to produce a refined probability distribution. The video data associated with a video block are entropy coded according to the refined probability distribution. Using machine learning to refine the probability distribution for entropy coding minimizes the cross-entropy loss between the symbols to entropy code and the refined probability distribution.
机译:机器学习用于优化对视频或图像数据进行熵编码的概率分布。确定与视频块相关联的符号的概率分布(例如,诸如在编码期间的量化的变换系数,或诸如在解码期间的来自比特流的语法元素),并从与视频块相关联的视频数据中提取特征集。视频块和/或邻居块。然后,使用机器学习对概率分布和特征集进行处理,以生成精确的概率分布。根据改进的概率分布,对与视频块相关的视频数据进行熵编码。使用机器学习来优化熵编码的概率分布,可以最大程度地减少熵编码符号与精确概率分布之间的交叉熵损失。

著录项

  • 公开/公告号WO2020176144A1

    专利类型

  • 公开/公告日2020-09-03

    原文格式PDF

  • 申请/专利权人 GOOGLE LLC;

    申请/专利号WO2019US59035

  • 发明设计人 BOKOV ALEXANDER;SU HUI;

    申请日2019-10-31

  • 分类号H04N19/11;H04N19/13;H04N19/14;H04N19/157;H04N19/176;H04N19/194;H04N19/593;

  • 国家 WO

  • 入库时间 2022-08-21 11:09:35

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