论文标题

自适应信息瓶颈指导的联合来源和图像传输的频道编码

Adaptive Information Bottleneck Guided Joint Source and Channel Coding for Image Transmission

论文作者

Sun, Lunan, Yang, Yang, Chen, Mingzhe, Guo, Caili, Saad, Walid, Poor, H. Vincent

论文摘要

用于图像传输的联合源和通道编码(JSCC)由于其稳健性和高效率引起了人们的关注。但是,现有的深入JSCC研究主要集中于最大程度地减少在固定数量可用渠道下传输和接收到的信息之间的失真。因此,传输速率可能远远超过其所需的最低值。在本文中,提出了一种自适应信息瓶颈(IB)引导的关节源和通道编码(AIB-JSCC)方法用于图像传输。 AIB-JSCC的目标是降低传输速率,同时提高图像重建质量。特别是,提出了一个新的IB图像传输目标,以最大程度地减少失真和传输速率。得出了在提出的目标上的数学上可触及的下限,然后将其作为AIB-JSCC的损耗函数。为了取消压缩和重建质量,提出了一种自适应算法,以根据训练过程中的失真动态调整拟议损耗功能的超参数。实验结果表明,AIB-JSCC可以显着减少所需的传输数据,并提高重建质量和下游任务准确性。

Joint source and channel coding (JSCC) for image transmission has attracted increasing attention due to its robustness and high efficiency. However, the existing deep JSCC research mainly focuses on minimizing the distortion between the transmitted and received information under a fixed number of available channels. Therefore, the transmitted rate may be far more than its required minimum value. In this paper, an adaptive information bottleneck (IB) guided joint source and channel coding (AIB-JSCC) method is proposed for image transmission. The goal of AIB-JSCC is to reduce the transmission rate while improving the image reconstruction quality. In particular, a new IB objective for image transmission is proposed so as to minimize the distortion and the transmission rate. A mathematically tractable lower bound on the proposed objective is derived, and then, adopted as the loss function of AIB-JSCC. To trade off compression and reconstruction quality, an adaptive algorithm is proposed to adjust the hyperparameter of the proposed loss function dynamically according to the distortion during the training. Experimental results show that AIB-JSCC can significantly reduce the required amount of transmitted data and improve the reconstruction quality and downstream task accuracy.

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