Reconstruction of Extended Target Intensity Maps and Velocity Distribution for Human Activity Classification

Nicolas C. Kruse;Ronny G. Guendel;Francesco Fioranelli;Alexander Yarovoy
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Abstract

The problem of human activity classification using a distributed network of radar sensors has been considered. A novel sensor fusion method has been proposed that processes data from a network of radar sensors and yields 3-D representations of both reflection intensity and velocity distribution. The formulated method has been verified in an experimental case study, where activity classification was performed using data collected with 14 participants moving in diverse, unconstrained trajectories and executing nine activities. The classification performance of the proposed method has been compared to alternative fusion methods on the same dataset, and a test accuracy and macro $F1$ -score of, respectively, 87.4% and 81.9% have been demonstrated. A feasibility study has also been performed to demonstrate the ability of the proposed method to generate 3-D distributions of intensity and target velocity.
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重构扩展目标强度图和速度分布以进行人类活动分类
研究了基于分布式雷达传感器网络的人类活动分类问题。提出了一种新的传感器融合方法,该方法处理来自雷达传感器网络的数据,并产生反射强度和速度分布的三维表示。该方法已在实验案例研究中得到验证,在实验案例研究中,14名参与者在不同的、不受约束的轨迹上移动,并执行了9项活动,使用收集的数据进行了活动分类。在同一数据集上,将所提出的方法与其他融合方法的分类性能进行了比较,结果表明,测试精度和宏观$F1$ -score分别为87.4%和81.9%。还进行了可行性研究,以证明该方法能够生成强度和目标速度的三维分布。
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