RadHAR: Human Activity Recognition from Point Clouds Generated through a Millimeter-wave Radar

Akash Deep Singh, S. Sandha, Luis Garcia, M. Srivastava
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引用次数: 111

Abstract

Accurate human activity recognition (HAR) is the key to enable emerging context-aware applications that require an understanding and identification of human behavior, e.g., monitoring disabled or elderly people who live alone. Traditionally, HAR has been implemented either through ambient sensors, e.g., cameras, or through wearable devices, e.g., a smartwatch, with an inertial measurement unit (IMU). The ambient sensing approach is typically more generalizable for different environments as this does not require every user to have a wearable device. However, utilizing a camera in privacy-sensitive areas such as a home may capture superfluous ambient information that a user may not feel comfortable sharing. Radars have been proposed as an alternative modality for coarse-grained activity recognition that captures a minimal subset of the ambient information using micro-Doppler spectrograms. However, training fine-grained, accurate activity classifiers is a challenge as low-cost millimeter-wave (mmWave) radar systems produce sparse and non-uniform point clouds. In this paper, we propose RadHAR, a framework that performs accurate HAR using sparse and non-uniform point clouds. RadHAR utilizes a sliding time window to accumulate point clouds from a mmWave radar and generate a voxelized representation that acts as input to our classifiers. We evaluate RadHAR using a low-cost, commercial, off-the-shelf radar to get sparse point clouds which are less visually compromising. We evaluate and demonstrate our system on a collected human activity dataset with 5 different activities. We compare the accuracy of various classifiers on the dataset and find that the best performing deep learning classifier achieves an accuracy of 90.47%. Our evaluation shows the efficacy of using mmWave radar for accurate HAR detection and we enumerate future research directions in this space.
RadHAR:通过毫米波雷达生成的点云来识别人类活动
准确的人类活动识别(HAR)是实现新兴环境感知应用的关键,这些应用需要理解和识别人类行为,例如监测独居的残疾人或老年人。传统上,HAR要么通过环境传感器(如摄像头)实现,要么通过可穿戴设备(如带有惯性测量单元(IMU)的智能手表)实现。环境传感方法通常更适用于不同的环境,因为它不需要每个用户都拥有可穿戴设备。然而,在家庭等隐私敏感区域使用摄像头可能会捕捉到用户可能不愿意分享的多余环境信息。雷达已被提议作为粗粒度活动识别的替代方式,使用微多普勒频谱图捕获最小的环境信息子集。然而,训练细粒度、准确的活动分类器是一个挑战,因为低成本毫米波(mmWave)雷达系统会产生稀疏和不均匀的点云。在本文中,我们提出了RadHAR,一个利用稀疏和非均匀点云进行精确HAR的框架。RadHAR利用滑动时间窗口来积累毫米波雷达的点云,并生成体素化表示,作为分类器的输入。我们使用低成本、商用、现成的雷达来评估RadHAR,以获得较少视觉损害的稀疏点云。我们在收集的人类活动数据集上评估并演示了我们的系统,其中包含5种不同的活动。我们比较了各种分类器在数据集上的准确率,发现表现最好的深度学习分类器达到了90.47%的准确率。我们的评估显示了使用毫米波雷达进行精确HAR检测的有效性,并列举了该领域未来的研究方向。
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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