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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Radar Data Cube Processing for Human Activity Recognition Using Multisubspace Learning
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Radar Data Cube Processing for Human Activity Recognition Using Multisubspace Learning

机译:利用多机空间学习的人类活动识别的雷达数据立方体处理

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In recent years, radar has been employed as a fall detector because of its effective sensing capabilities and penetration through walls. In this paper, we introduce a multilinear subspace human activity recognition scheme that exploits the three radar signal variables: slow-time, fast-time, and Doppler frequency. The proposed approach attempts to find the optimum subspaces that minimize the reconstruction error for different modes of the radar data cube. A comprehensive analysis of the optimization considerations is performed, such as initialization, number of projections, and convergence of the algorithms. Finally, a boosting scheme is proposed combining the unsupervised multilinear principal component analysis (PCA) with the supervised methods of linear discriminant analysis and shallow neural networks. Experimental results based on real radar data obtained from multiple subjects, different locations, and aspect angles (0 degrees, 30 degrees, 45 degrees, 60 degrees, and 90 degrees) demonstrate that the proposed algorithm yields the highest overall classification accuracy among spectrogram-based methods including predefined physical features, one- and two-dimensional PCA and convolutional neural networks.
机译:近年来,由于其有效的传感能力和穿过墙壁,因此雷达被用作坠落探测器。在本文中,我们介绍了一种多线性子空间人类活动识别方案,用于利用三个雷达信号变量:缓慢时间,快速时间和多普勒频率。所提出的方法试图找到最佳子空间,最小化雷达数据多维数据集的不同模式的重建误差。对优化考虑进行全面分析,例如初始化,投影数量和算法的收敛。最后,提出了一种促进的多线性主成分分析(PCA)与线性判别分析和浅神经网络的监督方法组合了升压方案。基于从多个受试者,不同位置和方面角度获得的真实雷达数据(0度,30度,45度,60度)的实验结果表明,所提出的算法在基于谱图的基础上产生最高的整体分类精度包括预定义物理特征,单维PCA和卷积神经网络的方法。

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