CVJul 6, 2022

Unsupervised Learning for Human Sensing Using Radio Signals

arXiv:2207.02370v145 citationsh-index: 93
Originality Incremental advance
AI Analysis

This work addresses the challenge of labeling RF signals for computer vision tasks in occluded environments, offering an incremental improvement by adapting existing unsupervised learning techniques to a novel modality.

The paper tackled the problem of labeling radio frequency (RF) signals for human sensing tasks by exploring unsupervised representation learning, showing that predictive methods outperform contrastive learning and achieve state-of-the-art results on tasks like pose estimation and action recognition.

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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