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首页> 外文期刊>IEICE Transactions on Communications >Accurate and Real-Time Pedestrian Classification Based on UWB Doppler Radar Images and Their Radial Velocity Features
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Accurate and Real-Time Pedestrian Classification Based on UWB Doppler Radar Images and Their Radial Velocity Features

机译:基于UWB多普勒雷达图像及其径向速度特征的实时准确行人分类

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摘要

The classification of human motion is an important aspect of monitoring pedestrian traffic. This requires the development of advanced surveillance and monitoring systems. Methods to achieve this have been proposed using micro-Doppler radars. However, reliable long-term data and/or complicated procedures are needed to classify motion accurately with these conventional methods because their accuracy and real-time capabilities are invariably inadequate. This paper proposes an accurate and real-time method for classifying the movements of pedestrians using ultra wide-band (UWB) Doppler radar to overcome these problems. The classification of various movements is achieved by extracting feature parameters based on UWB Doppler radar images and their radial velocity distributions. Experiments were carried out assuming six types of pedestrian movements (pedestrians swinging both arms, swinging only one arm, swinging no arms, on crutches, pushing wheelchairs, and seated in wheelchairs). We found they could be classified using the proposed feature parameters and a k-nearest neighbor algorithm. A classification accuracy of 96% was achieved with a mean calculation time of 0.55 s. Moreover, the classification accuracy was 99% using our proposed method for classifying three groups of pedestrian movements (normal walkers, those on crutches, and those in wheelchairs).
机译:人体运动的分类是监视行人交通的重要方面。这需要开发先进的监视和监视系统。已经提出了使用微多普勒雷达实现此目的的方法。但是,使用这些常规方法需要可靠的长期数据和/或复杂的过程来准确地对运动进行分类,因为它们的准确性和实时能力总是不够充分。为了克服这些问题,本文提出了一种使用UWB多普勒雷达对行人运动进行分类的准确实时的方法。通过基于UWB多普勒雷达图像及其径向速度分布提取特征参数,可以实现对各种运动的分类。实验是在假设有六种行人运动的情况下进行的(行人摆动双臂,仅摆动一只手臂,不挥动手臂,拐杖,推轮椅和坐在轮椅上)。我们发现可以使用建议的特征参数和k近邻算法对它们进行分类。分类平均精度为96%,平均计算时间为0.55 s。此外,使用我们提出的方法对三组行人运动(正常的助行器,拐杖上的人和轮椅上的人)进行分类,分类精度为99%。

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