基于循环神经网络的可伸缩学习图像压缩

Rige Su, Zhengxue Cheng, Heming Sun, J. Katto
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引用次数: 9

摘要

近年来,学习图像压缩取得了许多重大进展,例如基于卷积神经网络(cnn)的代表性超先验及其变体。然而,cnn不适合可扩展编码,需要单独训练多个模型来实现可变速率。在本文中,我们将可微量化和精确熵模型结合到递归神经网络(rnn)架构中,以实现可扩展的学习图像压缩。首先,我们提出了一个带有量化和熵编码的RNN架构。为了实现可扩展编码,我们通过调整基于拉格朗日乘法器的率失真优化函数中的分层lambda值来将比特分配到多个层。其次,我们添加了一个基于rnn的超先验来提高熵模型对多层残差表示的准确性。实验结果表明,在柯达数据集上,我们的性能可以与最近基于cnn的超先验方法相媲美。此外,我们的方法是一种可扩展和灵活的编码方法,可以使用一个模型实现多个速率,这非常吸引人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Learned Image Compression With A Recurrent Neural Networks-Based Hyperprior
Recently learned image compression has achieved many great progresses, such as representative hyperprior and its variants based on convolutional neural networks (CNNs). However, CNNs are not fit for scalable coding and multiple models need to be trained separately to achieve variable rates. In this paper, we incorporate differentiable quantization and accurate entropy models into recurrent neural networks (RNNs) architectures to achieve a scalable learned image compression. First, we present an RNN architecture with quantization and entropy coding. To realize the scalable coding, we allocate the bits to multiple layers, by adjusting the layer-wise lambda values in Lagrangian multiplier-based rate-distortion optimization function. Second, we add an RNN-based hyperprior to improve the accuracy of entropy models for multiple-layer residual representations. Experimental results demonstrate that our performance can be comparable with recent CNN-based hyperprior methods on Kodak dataset. Besides, our method is a scalable and flexible coding approach, to achieve multiple rates using one single model, which is very appealing.
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