Human Activity Recognition Method Based on Scattering Separation Using Multifrequency Radar Data

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Sensors Letters Pub Date : 2024-09-12 DOI:10.1109/LSENS.2024.3459939
Weiyi Li;Jiangang Liu;Shisheng Guo;Yong Jia
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Abstract

The human body displays typical properties of multiple sca-ttering when targeted by radar, and the strong echo signal scattered from the torso often masks the weak echo signal scattered from the other body parts such as limbs and the head, limiting the performance of activity recognition. To address this issue, a human activity recognition method based on scattering separation using multifrequency radar data is proposed. First, the multifrequency echo data of human activity collected from stepped-frequency continuous wave radar is stacked, followed by principal component analysis to separate the trunk signal and the branch signal into the first two components, which helps in avoiding the interference caused by masking effects. Subsequently, the two time-frequency spectrograms that express the characteristics of human activities jointly are put into two parallel convolutional neural networks to complete feature extraction and classification. Datasets encompassing six activities were gathered using the stepped-frequency radar. Test results demonstrate that this method can enhance the average recognition effectually compared to the approach without scattering separation.
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基于多频雷达数据散射分离的人类活动识别方法
当雷达瞄准人体时,人体显示出典型的多重散射特性,从躯干散射出的强回波信号往往会掩盖从四肢和头部等其他身体部位散射出的弱回波信号,从而限制了活动识别的性能。针对这一问题,提出了一种基于多频雷达数据散射分离的人体活动识别方法。首先,将阶跃频率连续波雷达采集到的人体活动多频回波数据进行堆叠,然后进行主成分分析,将躯干信号和分支信号分离成前两个成分,这有助于避免掩蔽效应造成的干扰。随后,将共同表达人类活动特征的两个时频频谱图放入两个并行的卷积神经网络中,完成特征提取和分类。使用阶跃频率雷达收集了包含六种活动的数据集。测试结果表明,与没有散射分离的方法相比,这种方法能有效提高平均识别率。
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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