基于加速度计的人类活动识别中的人工神经网络

Paula Lubina, M. Rudzki
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引用次数: 13

摘要

本文提出了一项研究,旨在评估人工神经网络(ANNs)在从加速度信号中提取的简单特征中识别人类活动的适用性。第二个目标是选择最具描述性的信号特征和传感器位置作为人工神经网络的输入。五个三轴加速度计安装在人体的以下位置:一个在背部,两个在腰部侧面,两个在脚踝两侧。要识别的活动集包括家庭环境中最常执行的动作。总共有25名受试者完成了一系列预先设定好的动作,比如走路、上下楼梯、从椅子上坐下来和站起来。通过定义动作的标签将采集到的信号划分为0.5s的时间窗。计算了几种统计信号特征,并将其用于训练人工神经网络。在不同的数据集上进行学习和测试。使用Fisher线性判别法分析表明,尽管某些计算值在区分类似活动方面发挥了重要作用,但在研究中考虑的活动的识别中,没有一个特征或传感器可以被省略。该算法对坐着和走路的识别准确率达到97%,对站立的识别准确率达到89%,对走楼梯的识别准确率达到72-75%。像站起来和坐下这样的短暂动作的检测准确率分别为56%和38%。尽管有研究宣称更高的准确性,但它们都没有考虑到本研究中分析的一系列活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial neural networks in accelerometer-based human activity recognition
This paper presents a study aimed to assess applicability of artificial neural networks (ANNs) in human activity recognition from simple features derived from accelerometric signals. Secondary goal was to select the most descriptive signal features and sensor locations to be used as inputs to ANNs. Five triaxial accelerometers were attached to human body in the following places: one at back, two at waist laterally and two at both ankles. The set of activities to be recognized was established to include the most often performed actions in home environment. In total 25 subjects performed a set of predefined actions like walking, going up and down the stairs, sitting down and standing up from a chair. Acquired signals were divided into 0.5s time windows by a label defining the action performed. Several statistical signal features were calculated and used to train ANNs. Learning and testing were performed on separate data sets. Analysis using Fisher Linear Discriminant showed that despite the fact that some of the calculated values play a significant role in the distinction between similar activities, none of the features or sensors could be omitted in the recognition of the activities considered in the study. Accuracy of 97% has been achieved for discriminating sitting and walking, 89% for standing, 72-75% for walking the stairs. Transient actions like standing up and sitting down have been detected with accuracy 56% and 38%, respectively. Even though there are studies declaring higher accuracy, none of them considered a set of activities analyzed in this research.
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