用于带宽受限传感器应用的微小生成图像压缩

Nikolai Körber, A. Siebert, S. Hauke, Daniel Mueller-Gritschneder
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引用次数: 1

摘要

基于生成对抗网络(gan)的深度图像压缩算法是解决物联网传感器网络(例如低功耗广域网)中常见的严格通信带宽限制的一个有前途的方向。然而,目前的方法没有考虑到执行图像编码的传感器节点通常只提供非常有限的计算和存储能力,例如资源受限的微型设备,如微控制器。在本文中,我们提出了第一种专门为微控制器上的图像压缩而设计的微型生成图像压缩方法。我们的编码器基于众所周知的MobileNetV2网络架构,同时保持解码器侧固定。为了应对压缩管道的不对称设计,我们研究了不同的训练策略(端到端、知识蒸馏)和整数量化技术(后训练、量化感知训练)对gan训练稳定性的影响。在cityscape数据集上,我们实现了非常接近最先进的压缩性能,同时所需的SRAM大小减少了99%,闪存减少了97%,乘法添加操作减少了87%。我们的研究结果表明,微小的生成图像压缩特别适合于特定应用领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tiny Generative Image Compression for Bandwidth-Constrained Sensor Applications
Deep image compression algorithms based on Generative Adversarial Networks (GANs) are a promising direction to address the strict communication bandwidth limitations commonly encountered in IoT sensor networks (e.g. Low Power Wide Area Networks). However, current methods do not consider that the sensor nodes, which perform the image encoding, usually only offer very limited computation and memory capabilities, e.g. a resource-constrained tiny device such as a micro-controller. In this paper, we propose the first tiny generative image compression method specifically designed for image compression on micro-controllers. We base our encoder on the well-known MobileNetV2 network architecture, while keeping the decoder side fixed. To cope with the resulting asymmetric design of the compression pipeline, we investigate the impact of different training strategies (end-to-end, knowledge distillation) and integer quantization techniques (post-training, quantization-aware training) on the GAN-training stability. On the Cityscapes dataset, we achieve a compression performance that is very close to the state-of-the-art, while requiring 99% less SRAM size, 97% smaller flash storage and 87% less multiply-add operations. Our findings suggest that tiny generative image compression is particularly well suited for application-specific domains.
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