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Radar Fall Detectors: A Comparison

机译:雷达跌倒检测器:比较

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Falls are a major cause of accidents in elderly people. Even simple falls can lead to severe injuries, and sometimes result in death. Doppler fall detection has drawn much attention in recent years. Micro-Doppler signatures play an important role for the Doppler-based radar systems. Numerous studies have demonstrated the offerings of micro-Doppler characteristics for fall detection. In this respect, a plethora of micro-Doppler signature features have been proposed, including those stemming from speech recognition and wavelet decomposition. In this work, we consider four different sets of features for fall detection. These can be categorized as spectrogram based features, wavelet based features, mel-frequency cepstrum coefficients, and power burst curve features. Support vector machine is employed as the classifier. Performance of the respective fall detectors is investigated using real data obtained with the same radar operating resources and under identical sensing conditions. For the considered data, the spectrogram based feature set is shown to provide superior fall detection performance.
机译:跌倒是老年人事故的主要原因。即使是简单的跌倒也可能导致严重伤害,有时甚至导致死亡。近年来,多普勒跌倒检测引起了人们的广泛关注。微型多普勒信号在基于多普勒的雷达系统中起着重要的作用。大量研究证明了用于跌倒检测的微多普勒特性产品。在这方面,已经提出了许多微多普勒签名特征,包括那些源自语音识别和小波分解的特征。在这项工作中,我们考虑用于跌倒检测的四套不同功能。这些可以分为基于频谱图的特征,基于小波的特征,梅尔频率倒谱系数和功率突发曲线特征。支持向量机被用作分类器。使用在相同的雷达操作资源和相同的感应条件下获得的真实数据来研究各个跌倒检测器的性能。对于考虑的数据,显示了基于频谱图的功能集,可提供出色的跌倒检测性能。

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