Human activity recognition using a fuzzy inference system

M. Helmi, S. Almodarresi
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引用次数: 24

Abstract

This paper presents a fuzzy inference system (FIS) for recognizing human activities using a triaxial accelerometer. The accelerometer is used to collect human motion acceleration data for classifying four different activities: moving forward, jumping, going upstairs, and going downstairs. Three different features including peak to peak amplitude, standard deviation, and correlation between axes are extracted from each axis of the accelerometer as inputs to the fuzzy system. The fuzzy rules and the membership functions of this fuzzy system are defined based on the experimental values of these features. The experiments show that the proposed fuzzy inference system recognizes moving forward, jumping, going upstairs, and going downstairs with accuracy of 100%, 96.7%, 93.3%, and 93.3%, respectively.
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基于模糊推理的人体活动识别系统
提出了一种利用三轴加速度计识别人体活动的模糊推理系统。加速度计用于收集人体运动加速度数据,用于分类四种不同的活动:向前移动、跳跃、上楼和下楼。从加速度计的每个轴中提取三个不同的特征,包括峰值幅值、标准差和轴之间的相关性,作为模糊系统的输入。根据这些特征的实验值,定义了模糊规则和模糊系统的隶属函数。实验表明,本文提出的模糊推理系统对向前移动、跳跃、上楼和下楼的识别准确率分别为100%、96.7%、93.3%和93.3%。
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