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USING RATE DISTORTION COST AS A LOSS FUNCTION FOR DEEP LEARNING

机译:利用速率失真成本作为深度学习的损失函数

摘要

An apparatus for encoding an image block includes a processor that presents, to a machine-learning model, the image block, obtains the partition decision for encoding the image block from the model, and encodes the image block using the partition decision. The model is trained to output a partition decision for encoding the image block by using training data for a plurality of training blocks as input, the training data including for a training block, partition decisions for encoding the training block, and, for each partition decision, a rate-distortion value resulting from encoding the training block using the partition decision. The model is trained using a loss function combining a partition loss function based upon a relationship between the partition decisions and respective predicted partitions, and a rate-distortion cost loss function based upon a relationship between the rate-distortion values and respective predicted rate-distortion values.
机译:用于编码图像块的装置包括处理器,该处理器向机器学习模型,图像块获得用于从模型中编码图像块的分区决定,并使用分区决定对图像块进行编码。 验证模型以输出通过使用多个训练块作为输入的训练数据来输出用于对图像块进行编码的分区决策,该训练数据包括用于训练块的训练数据,用于编码训练块的分区决策,以及每个分区决策 ,使用分区决策编码训练块产生的速率失真值。 使用基于分区决策和各自的预测分区之间的关系组合分区丢失功能的损耗函数训练模型,以及基于速率失真值与相应预测速率失真之间的关系的速率失真成本损失函数 价值观。

著录项

  • 公开/公告号EP3942475A1

    专利类型

  • 公开/公告日2022-01-26

    原文格式PDF

  • 申请/专利权人 GOOGLE LLC;

    申请/专利号EP20190715674

  • 申请日2019-03-21

  • 分类号G06N3/04;G06N3/08;H04N19/119;H04N19/147;H04N19/172;H04N19/176;G06T9;

  • 国家 EP

  • 入库时间 2024-06-14 22:42:56

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