Rate-Distortion Theory in Coding for Machines and its Applications.

Alon Harell, Yalda Foroutan, Nilesh Ahuja, Parual Datta, Bhavya Kanzariya, V Srinivasa Somayazulu, Omesh Tickoo, Anderson de Andrade, Ivan V Bajic
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Abstract

Recent years have seen a tremendous growth in both the capability and popularity of automatic machine analysis of media, especially images and video. As a result, a growing need for efficient compression methods optimised for machine vision, rather than human vision, has emerged. To meet this growing demand, significant developments have been made in image and video coding for machines. Unfortunately, while there is a substantial body of knowledge regarding rate-distortion theory for human vision, the same cannot be said of machine analysis. In this paper, we greatly extend the current rate-distortion theory for machines, providing insight into important design considerations of machine-vision codecs. We then utilise this newfound understanding to improve several methods for learned image coding for machines. Our proposed methods achieve state-of-the-art rate-distortion performance on several computer vision tasks - classification, instance and semantic segmentation, and object detection.

机器编码中的率失真理论及其应用。
近年来,自动机器分析媒体,特别是图像和视频的能力和普及程度都有了巨大的增长。因此,越来越需要针对机器视觉而非人类视觉进行优化的高效压缩方法。为了满足这一日益增长的需求,在机器图像和视频编码方面取得了重大进展。不幸的是,虽然有大量关于人类视觉的率失真理论的知识,但机器分析却不能如此。在本文中,我们极大地扩展了当前机器的速率失真理论,为机器视觉编解码器的重要设计考虑提供了见解。然后,我们利用这一新发现的理解来改进机器学习图像编码的几种方法。我们提出的方法在分类、实例和语义分割以及目标检测等几个计算机视觉任务上实现了最先进的率失真性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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