Exploration of Learned Lifting-Based Transform Structures for Fully Scalable and Accessible Wavelet-Like Image Compression

Xinyue Li;Aous Naman;David Taubman
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Abstract

This paper provides a comprehensive study on features and performance of different ways to incorporate neural networks into lifting-based wavelet-like transforms, within the context of fully scalable and accessible image compression. Specifically, we explore different arrangements of lifting steps, as well as various network architectures for learned lifting operators. Moreover, we examine the impact of the number of learned lifting steps, the number of channels, the number of layers and the support of kernels in each learned lifting operator. To facilitate the study, we investigate two generic training methodologies that are simultaneously appropriate to a wide variety of lifting structures considered. Experimental results ultimately suggest that retaining fixed lifting steps from the base wavelet transform is highly beneficial. Moreover, we demonstrate that employing more learned lifting steps and more layers in each learned lifting operator do not contribute strongly to the compression performance. However, benefits can be obtained by utilizing more channels in each learned lifting operator. Ultimately, the learned wavelet-like transform proposed in this paper achieves over 25% bit-rate savings compared to JPEG 2000 with compact spatial support.
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探索基于学习提升的变换结构,实现完全可扩展、可访问的小波图像压缩
本文以完全可扩展和可访问的图像压缩为背景,全面研究了将神经网络融入基于提升的小波变换的不同方法的特点和性能。具体来说,我们探索了提升步骤的不同安排,以及学习提升算子的各种网络架构。此外,我们还研究了每个学习到的提升算子中学习到的提升步骤数量、通道数量、层数和内核支持的影响。为便于研究,我们研究了两种通用训练方法,它们同时适用于所考虑的各种提升结构。实验结果最终表明,保留基础小波变换的固定提升步骤非常有益。此外,我们还证明,采用更多的学习提升步骤和每个学习提升算子中的更多层次,对压缩性能的贡献并不大。然而,通过在每个学习提升算子中使用更多通道,可以获得更多好处。最终,本文提出的学习型小波变换与具有紧凑空间支持的 JPEG 2000 相比,可节省超过 25% 的比特率。
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