Progressive Deep Image Compression for Hybrid Contexts of Image Classification and Reconstruction

计算机科学 图像压缩 人工智能 编解码器 上下文图像分类 水准点(测量) 数据压缩 模式识别(心理学) 机器学习 图像(数学) 图像处理 电信 大地测量学 地理
作者
Zhongyue Lei,Peng Duan,Xuemin Hong,João F. C. Mota,Jianghong Shi,Cheng‐Xiang Wang
出处
期刊:IEEE Journal on Selected Areas in Communications [Institute of Electrical and Electronics Engineers]
卷期号:41 (1): 72-89 被引量:14
标识
DOI:10.1109/jsac.2022.3221998
摘要

Progressive deep image compression (DIC) with hybrid contexts is an under-investigated problem that aims to jointly maximize the utility of a compressed image for multiple contexts or tasks under variable rates. In this paper, we consider the contexts of image reconstruction and classification. We propose a DIC framework, called residual-enhanced mask-based progressive generative coding (RMPGC), designed for explicit control of the performance within the rate-distortion-classification-perception (RDCP) trade-off. Three independent mechanisms are introduced to yield a semantically structured latent representation that can support parameterized control of rate and context adaptation. Experimental results show that the proposed RMPGC outperforms a benchmark DIC scheme using the same generative adversarial nets (GANs) backbone in all six metrics related to classification, distortion, and perception. Moreover, RMPGC is a flexible framework that can be applied to different neural network backbones. Some typical implementations are given and shown to outperform the classic BPG codec and four state-of-the-art DIC schemes in classification and perception metrics, with a slight degradation in distortion metrics. Our proposal of a nonlinear-neural-coded and richly structured latent space makes the proposed DIC scheme well suited for image compression in wireless communications, multi-user broadcasting, and multi-tasking applications.
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