Unsupervised Learning for Human Sensing Using Radio Signals

Tianhong Li, Lijie Fan, Yuan Yuan, D. Katabi
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引用次数: 18

Abstract

There is a growing literature demonstrating the feasibility of using Radio Frequency (RF) signals to enable key computer vision tasks in the presence of occlusions and poor lighting. It leverages that RF signals traverse walls and occlusions to deliver through-wall pose estimation, action recognition, scene captioning, and human re-identification. However, unlike RGB datasets which can be labeled by human workers, labeling RF signals is a daunting task because such signals are not human interpretable. Yet, it is fairly easy to collect unlabelled RF signals. It would be highly beneficial to use such unlabeled RF data to learn useful representations in an unsupervised manner. Thus, in this paper, we explore the feasibility of adapting RGB-based unsupervised representation learning to RF signals. We show that while contrastive learning has emerged as the main technique for unsupervised representation learning from images and videos, such methods produce poor performance when applied to sensing humans using RF signals. In contrast, predictive unsupervised learning methods learn high-quality representations that can be used for multiple downstream RF-based sensing tasks. Our empirical results show that this approach outperforms state-of-the-art RF-based human sensing on various tasks, opening the possibility of unsupervised representation learning from this novel modality.
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利用无线电信号进行人类传感的无监督学习
越来越多的文献表明,在遮挡和光线不足的情况下,使用射频(RF)信号实现关键的计算机视觉任务是可行的。它利用射频信号穿过墙壁和遮挡来提供穿墙姿势估计、动作识别、场景字幕和人体再识别。然而,与可以由人类工作人员标记的RGB数据集不同,标记RF信号是一项艰巨的任务,因为这些信号不是人类可解释的。然而,它是相当容易收集未标记的射频信号。使用这种未标记的射频数据以无监督的方式学习有用的表示将是非常有益的。因此,在本文中,我们探索了将基于rgb的无监督表示学习应用于射频信号的可行性。我们表明,虽然对比学习已经成为从图像和视频中进行无监督表示学习的主要技术,但当应用于使用射频信号感知人类时,这种方法的性能很差。相比之下,预测性无监督学习方法可以学习高质量的表征,可用于多个下游基于rf的传感任务。我们的实证结果表明,这种方法在各种任务上优于最先进的基于射频的人类感知,从而开启了从这种新模式中进行无监督表示学习的可能性。
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