A Reinforcement Learning Based Design of Compressive Sensing Systems for Human Activity Recognition

Guocheng Liu, Rui Ma, Qi Hao
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引用次数: 2

Abstract

This paper presents a reinforcement learning based distributed compressive sensing system design method for human activity recognition. This system uses distributed infrared sensors to capture human motion information and aims at representing complex activity scenarios with as little amount of data as possible. Therefore, a set of binary sampling masks are designed to modulate the fields of view (FoV) of sensors and to reduce the amount of measurement data without losing the major features of the target information. The spatial relation between two adjacent sensors is investigated to acquire 3d information with the maximum efficiency. In this work, the main contributions include two parts: (1) design the optimal deployment of distributed sensors and (2) learn the structure of sampling masks by using the policy gradient (PG) based reinforcement learning scheme. Experiment results show that the the proposed system can increase the sensing efficiency and improve the performance of activity recognition.
基于强化学习的人体活动识别压缩感知系统设计
提出了一种基于强化学习的分布式压缩感知人体活动识别系统设计方法。该系统使用分布式红外传感器捕获人体运动信息,旨在用尽可能少的数据表示复杂的活动场景。因此,设计了一套二值采样掩模来调制传感器的视场,在不丢失目标信息主要特征的前提下减少测量数据量。研究了相邻传感器之间的空间关系,以最大效率获取三维信息。在这项工作中,主要贡献包括两个部分:(1)设计分布式传感器的最优部署;(2)使用基于策略梯度(PG)的强化学习方案学习采样掩模的结构。实验结果表明,该系统可以提高感知效率,提高活动识别性能。
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