Automatic fall detection based on Doppler radar motion signature

Liang Liu, M. Popescu, M. Skubic, M. Rantz, T. Yardibi, P. Cuddihy
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引用次数: 166

Abstract

Falling is a common health problem for elderly. It is reported that more than one third of adults 65 and older fall each year in the United States. To address the problem, we are currently developing a Doppler radar-based fall detection system. Doppler radar sensors provide an inexpensive way to recognize human activity. In this paper, we employed mel-frequency cepstral coefficients (MFCC) to represent the Doppler signatures of various human activities such as walking, bending down, falling, etc. Then we used two different classifiers, SVM and kNN, to automatically detect falls based on the extracted MFCC features. We obtained encouraging classification results on a pilot dataset that contained 109 falls and 341 non-fall human activities.
基于多普勒雷达运动特征的自动跌落检测
跌倒是老年人常见的健康问题。据报道,在美国,每年有超过三分之一的65岁及以上的成年人摔倒。为了解决这个问题,我们目前正在开发一种基于多普勒雷达的跌倒检测系统。多普勒雷达传感器提供了一种廉价的方法来识别人类活动。在本文中,我们使用mel-frequency倒谱系数(MFCC)来表示各种人类活动的多普勒特征,如行走、弯腰、跌倒等。然后,我们使用SVM和kNN两种不同的分类器,基于提取的MFCC特征自动检测跌倒。我们在包含109个跌倒和341个非跌倒人类活动的试点数据集上获得了令人鼓舞的分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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