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Integer Discrete Flows and Lossless Compression

机译:整数离散流量和无损压缩

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Lossless compression methods shorten the expected representation size of data without loss of information, using a statistical model. Flow-based models are attractive in this setting because they admit exact likelihood optimization, which is equivalent to minimizing the expected number of bits per message. However, conventional flows assume continuous data, which may lead to reconstruction errors when quantized for compression. For that reason, we introduce a flow-based generative model for ordinal discrete data called Integer Discrete Flow (IDF): a bijective integer map that can learn rich transformations on high-dimensional data. As building blocks for IDFs, we introduce a flexible transformation layer called integer discrete coupling. Our experiments show that IDFs are competitive with other flow-based generative models. Furthermore, we demonstrate that IDF based compression achieves state-of-the-art lossless compression rates on CIFAR10, ImageNet32, and ImageNet64. To the best of our knowledge, this is the first lossless compression method that uses invertible neural networks.
机译:无损压缩方法使用统计模型缩短数据的预期表示尺寸,而不会丢失信息。基于流的模型在此设置中具有吸引力,因为它们承认确切的似然优化,这相当于最小化每条消息的预期位数。然而,传统流程假设连续数据,这可能导致在量化压缩时导致重建误差。因此,我们介绍了一个名为整数离散流(IDF)的序数离散数据的基于流的生成模型:可以在高维数据上学习丰富的变换的怪异整数映射。作为IDFS的构建块,我们引入了称为整数离散耦合的柔性变换层。我们的实验表明,IDFS与其他基于流的生成模型具有竞争力。此外,我们证明基于IDF的压缩在CIFAR10,Imagenet32和Imagenet64上实现了最先进的无损压缩率。据我们所知,这是第一个使用可逆神经网络的无损压缩方法。

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