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基于小波和自适应池化的分层活动识别和跌倒检测方法。

A Hierarchical Approach to Activity Recognition and Fall Detection Using Wavelets and Adaptive Pooling.

机构信息

Department of Computer Science and Engineering, University of Louisville, Louisville, KY 40208, USA.

Department of Computer Science and Information Technology, Hood College, Frederick, MD 21701, USA.

出版信息

Sensors (Basel). 2021 Oct 7;21(19):6653. doi: 10.3390/s21196653.

Abstract

Human activity recognition has been a key study topic in the development of cyber physical systems and assisted living applications. In particular, inertial sensor based systems have become increasingly popular because they do not restrict users' movement and are also relatively simple to implement compared to other approaches. In this paper, we present a hierarchical classification framework based on wavelets and adaptive pooling for activity recognition and fall detection predicting fall direction and severity. To accomplish this, windowed segments were extracted from each recording of inertial measurements from the SisFall dataset. A combination of wavelet based feature extraction and adaptive pooling was used before a classification framework was applied to determine the output class. Furthermore, tests were performed to determine the best observation window size and the sensor modality to use. Based on the experiments the best window size was found to be 3 s and the best sensor modality was found to be a combination of accelerometer and gyroscope measurements. These were used to perform activity recognition and fall detection with a resulting weighted F1 score of 94.67%. This framework is novel in terms of the approach to the human activity recognition and fall detection problem as it provides a scheme that is computationally less intensive while providing promising results and therefore can contribute to edge deployment of such systems.

摘要

人体活动识别一直是网络物理系统和辅助生活应用发展的关键研究课题。特别是,基于惯性传感器的系统变得越来越流行,因为它们不会限制用户的运动,并且与其他方法相比,实施起来相对简单。在本文中,我们提出了一种基于小波和自适应池化的分层分类框架,用于活动识别和跌倒检测,预测跌倒方向和严重程度。为了实现这一点,从 SisFall 数据集的惯性测量记录中提取了窗口段。在应用分类框架确定输出类之前,使用基于小波的特征提取和自适应池化的组合。此外,还进行了测试以确定最佳观察窗口大小和要使用的传感器模式。基于实验,发现最佳窗口大小为 3 秒,最佳传感器模式是加速度计和陀螺仪测量的组合。这些被用于进行活动识别和跌倒检测,得到加权 F1 分数为 94.67%。就人体活动识别和跌倒检测问题的处理方法而言,该框架是新颖的,因为它提供了一种计算量较小的方案,同时提供了有希望的结果,因此可以为这类系统的边缘部署做出贡献。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b87b/8512095/0be9d05eb412/sensors-21-06653-g001.jpg

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