Automatic Human Fall Detection Using Multiple Tri-axial Accelerometers

F. Harrou, Nabil Zerrouki, Abdelkader Dairi, Ying Sun, A. Houacine
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引用次数: 1

Abstract

Accurately detecting human falls of elderly people at an early stage is vital for providing early alert and avoid serious injury. Towards this purpose, multiple triaxial accelerometers data has been used to uncover falls based on an unsupervised monitoring procedure. Specifically, this paper introduces a one-class support vector machine (OCSVM) scheme into human fall detection. The main motivation behind the use of OCSVM is that it is a distribution-free learning model and can separate nonlinear features in an unsupervised way need for labeled data. The proposed OCSVM scheme was evaluated on fall detection databases from the University of Rzeszow's. Three other promising classification algorithms, Mean shift, Expectation-Maximization, k-means, were also assessed based on the same datasets. Their detection performances were compared with those obtained by the OCSVM algorithm. The results showed that the OCSVM scheme outperformed the other methods.
使用多个三轴加速度计的自动人体跌倒检测
早期准确发现老年人跌倒,对于提供早期预警和避免严重伤害至关重要。为了实现这一目的,多个三轴加速度计数据被用于基于无监督监测程序来发现坠落。具体来说,本文将一类支持向量机(OCSVM)方案引入到人体跌倒检测中。使用OCSVM背后的主要动机是它是一个无分布的学习模型,可以以无监督的方式分离非线性特征,需要标记数据。在Rzeszow大学的跌倒检测数据库上对所提出的OCSVM方案进行了评估。另外三种有前途的分类算法,Mean shift, Expectation-Maximization, k-means,也基于相同的数据集进行了评估。将其检测性能与OCSVM算法的检测性能进行了比较。结果表明,OCSVM方案优于其他方法。
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