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The Impact of Environmental Factors on mm-Wave Radar Point-Clouds for Human Activity Recognition

机译:环境因素对毫米波雷达点云的人类活动识别的影响

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Recently, the millimeter wave (mmWave) radar sensing has attracted significant attention due to the physical characteristic of mmWave signals and the large 5G frequency bands. Transforming the mmWave signals into point clouds via physics enables many new applications such as human activity recognition. However, learning the human activity from the mmWave point-clouds are susceptible to many environmental/dynamic factors, such as the spatial diversity, facing orientation, and the physical stature of users, which can severely degrade the performance of radar-based human activity recognition systems. By developing a dataset based on the TI hardware platform, this paper builds a baseline recognition system using convolutional neural networks [1], investigates the properties of mmWave point-clouds, and reports the recognition accuracy for six human activities under different experimental scenarios including the distinct testing locations, different orientations and physical stature of users.
机译:近来,由于毫米波信号的物理特性和较大的5G频带,毫米波(mmWave)雷达感测引起了人们的极大关注。通过物理将mmWave信号转换为点云,可以实现许多新应用,例如人类活动识别。但是,从毫米波点云中学习人类活动容易受到许多环境/动态因素的影响,例如空间多样性,朝向,用户的身材,这会严重降低基于雷达的人类活动识别的性能系统。通过开发基于TI硬件平台的数据集,本文使用卷积神经网络构建了基线识别系统[1],研究了mmWave点云的属性,并报告了在不同实验场景下六种人类活动的识别精度,包括不同的测试位置,不同的方向和用户的身体状况。

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