论文标题
MDPOSE:使用WiFi微型多普勒签名的人类骨骼运动重建
MDPose: Human Skeletal Motion Reconstruction Using WiFi Micro-Doppler Signatures
论文作者
论文摘要
基于光传感器的运动跟踪系统通常通常会遇到问题,例如较差的照明条件,遮挡,有限的覆盖范围,并可能引起隐私问题。最近,出现了使用商业WiFi设备的基于射频(RF)的方法,这些方法在保留隐私权的同时提供了低成本无处不在的感应。但是,RF传感系统的输出(例如范围多普勒频谱图)不能直观地表示人类运动,通常需要进一步处理。在这项研究中,提出了基于WiFi Micro-Doppler特征的人类骨骼运动重建的新型框架MDPOSE。它提供了一个有效的解决方案,可以通过重建17个要点的骨骼模型来跟踪人类活动,这可以帮助以更易于理解的方式解释常规RF传感输出。具体而言,MDPOSE具有各种增量阶段,可以逐渐应对一系列挑战:首先,将实现一种降级算法来消除任何可能影响特征提取并增强弱多普勒签名的不需要的噪声。其次,应用卷积神经网络(CNN) - 突发性神经网络(RNN)体系结构用于从干净的微型多普勒签名中学习时间空间依赖,并恢复关键点的速度信息。最后,采用姿势优化机制来估计骨骼的初始状态并限制误差的增加。我们已经使用带有单个接收器雷达系统的众多受试者在各种环境中进行了全面的测试,以证明MDPOSE的性能,并在所有关键点位置上报告了29.4mm的绝对误差,这超出了最先进的基于RF的姿势估计系统。
Motion tracking systems based on optical sensors typically often suffer from issues, such as poor lighting conditions, occlusion, limited coverage, and may raise privacy concerns. More recently, radio frequency (RF)-based approaches using commercial WiFi devices have emerged which offer low-cost ubiquitous sensing whilst preserving privacy. However, the output of an RF sensing system, such as Range-Doppler spectrograms, cannot represent human motion intuitively and usually requires further processing. In this study, MDPose, a novel framework for human skeletal motion reconstruction based on WiFi micro-Doppler signatures, is proposed. It provides an effective solution to track human activities by reconstructing a skeleton model with 17 key points, which can assist with the interpretation of conventional RF sensing outputs in a more understandable way. Specifically, MDPose has various incremental stages to gradually address a series of challenges: First, a denoising algorithm is implemented to remove any unwanted noise that may affect the feature extraction and enhance weak Doppler signatures. Secondly, the convolutional neural network (CNN)-recurrent neural network (RNN) architecture is applied to learn temporal-spatial dependency from clean micro-Doppler signatures and restore key points' velocity information. Finally, a pose optimising mechanism is employed to estimate the initial state of the skeleton and to limit the increase of error. We have conducted comprehensive tests in a variety of environments using numerous subjects with a single receiver radar system to demonstrate the performance of MDPose, and report 29.4mm mean absolute error over all key points positions, which outperforms state-of-the-art RF-based pose estimation systems.