MD-Pose:单通道超宽带雷达人体姿态估计

Xiaolong Zhou;Tian Jin;Yongpeng Dai;Yongkun Song;Zhifeng Qiu
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引用次数: 0

摘要

基于光学传感器的人体姿态估计难以解决恶劣环境和遮挡下的情况。本文提出了一种基于微多普勒(MD)的单通道超宽带(UWB)雷达人体姿态估计方法——MD- pose。MD特征反映了人体的运动学特性,为识别目标的姿态提供了一种独特的方法,从而提供了更全面的人体姿态感知。我们探索人类骨骼和MD特征之间的关系,这揭示了这些以前无法解释的现象的根本起源。单通道超宽带雷达具有体积小、成本低、便携等优点,得到了广泛的应用。相比之下,其分辨率低于MIMO超宽带雷达。因此,本文揭示了如何在通道较少的情况下,基于MD签名实现细粒度人体姿态。通过短时傅里叶变换(STFT)得到人体目标的MD谱图,这是该MD- pose的输入数据。利用超宽带雷达MD谱图训练准对称U-Net神经网络,可以估计人体关键点。实验显示了与最先进的人体姿态估计方法相当的定量结果,并提供了指导基于雷达的人体姿态估计设计所需的潜在见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MD-Pose: Human Pose Estimation for Single-Channel UWB Radar
Human pose estimation based on optical sensors is difficult to solve the situation under harsh environments and shielding. In this paper, a Micro-Doppler (MD) based human pose estimation for the single-channel ultra-wideband (UWB) radar, called MD-Pose, is proposed. The MD characteristic reflects the kinematics of the human and provides a unique method for identifying the target’s posture, which offers a more comprehensive perception of human posture. We explore the relationship between the human skeleton and the MD signature, which reveals the fundamental origins of these previously unexplained phenomena. The single-channel UWB radar is widely used because of its small size, low cost, and portability. In contrast, its resolution is lower than that of the MIMO UWB radar. Therefore, this paper reveals how to implement fine-grained human posture based on the MD signature with fewer channels. The MD spectrogram of the human target is obtained by the short-time Fourier transform (STFT), which is the input data of the proposed MD-Pose. A quasi-symmetric U-Net neural network is trained with the UWB radar MD spectrogram, which can estimate the human keypoints. The experiments show comparable quantitative results with the state-of-the-art human pose estimation method and provide the underlying insights needed to guide the design of radar-based human pose estimation.
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