频率感知学习图像压缩的质量可扩展性

Hyomin Choi, Fabien Racapé, Shahab Hamidi-Rad, Mateen Ulhaq, Simon Feltman
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引用次数: 0

摘要

空间频率分析和变换在大多数工程图像和视频有损编解码器中起着核心作用,但很少用于基于神经网络(NN)的方法。我们提出了一种新的基于神经网络的图像编码框架,该框架利用前向小波变换对输入信号进行空间频率分解。我们的编码器为每个低频和高频的潜在表示生成单独的比特流。这使我们的解码器能够以质量可扩展的方式选择性地解码比特流。因此,解码器可以通过在基比特流之外使用增强比特流来产生增强图像。此外,我们的方法能够通过使用增强潜在表示的相应部分来增强特定的感兴趣区域(ROI)。我们的实验表明,与几种不可伸缩的图像编解码器相比,该方法具有竞争力的率失真性能。我们还展示了我们的两级质量可扩展性的有效性,以及它在ROI质量提高方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequency-aware Learned Image Compression for Quality Scalability
Spatial frequency analysis and transforms serve a central role in most engineered image and video lossy codecs, but are rarely employed in neural network (NN)-based approaches. We propose a novel NN-based image coding framework that utilizes forward wavelet transforms to decompose the input signal by spatial frequency. Our encoder generates separate bitstreams for each latent representation of low and high frequencies. This enables our decoder to selectively decode bitstreams in a quality-scalable manner. Hence, the decoder can produce an enhanced image by using an enhancement bitstream in addition to the base bitstream. Furthermore, our method is able to enhance only a specific region of interest (ROI) by using a corresponding part of the enhancement latent representation. Our experiments demonstrate that the proposed method shows competitive rate-distortion performance compared to several non-scalable image codecs. We also showcase the effectiveness of our two-level quality scalability, as well as its practicality in ROI quality enhancement.
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