人类活动分类与雷达信号处理和机器学习

Mu Jia, Shaoxuan Li, J. Kernec, Shufan Yang, F. Fioranelli, O. Romain
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引用次数: 13

摘要

随着世界范围内老年人数量的增加,需要新的室内活动监测模式,以使人们在家中独立生活更长时间。基于雷达的人类活动识别已经被确定为一种选择的感知方式,因为它是隐私保护的,不需要最终用户遵守或操纵。在本文中,我们使用FMCW雷达记录的格拉斯哥大学数据集中的六种不同活动来探索机器学习算法对人类活动识别的鲁棒性。原始雷达数据经过预处理,并使用四个不同的域表示,即距离-时间、距离-多普勒振幅和相位图以及节奏速度图。从这些特征中,可以使用支持向量机、堆叠自动编码器和卷积神经网络提取和分类显著特征。将手工特征与CNN特征融合,得到准确率超过96%的最佳分类方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity classification with radar signal processing and machine learning
As the number of older adults increases worldwide, new paradigms for indoor activity monitoring are required to keep people living at home independently longer. Radar-based human activity recognition has been identified as a sensing modality of choice because it is privacy-preserving and does not require end-users compliance or manipulation. In this paper, we explore the robustness of machine learning algorithms for human activity recognition using six different activities from the University of Glasgow dataset recorded with an FMCW radar. The raw radar data is pre-processed and represented using four different domains, namely, range-time, range-Doppler amplitude and phase diagrams, and Cadence Velocity Diagram. From those, salient features can be extracted and classified using Support Vector Machine, Stacked AutoEncoder, and Convolutional Neural Networks. The fusion of handcrafted features and features from CNN is applied to get the best scheme of classification with over 96% accuracy.
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