Human Activities Recognition and Monitoring System Using Machine Learning Techniques

R. Pinky, Sapam Jitu Singh, Chongtham Pankaj
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引用次数: 1

Abstract

Human activity recognition is the wide range of field of research and challenging task to identify the actions of the human in period of time based on received signal strength data in wireless sensor network. It is important to monitor activity of a person for numerous reasons. Recently, Machine Learning approach shows capable of classifying the actions of the human by automatically using the raw sensor data. In this work, the dataset consists of received signal strength of seven activities using three sensor nodes that are trained by using supervised machine learning algorithms to recognize the actions and random activities are monitored to identify the strange action of the person using unsupervised machine learning. The proposed machine learning based human activity recognition model are evaluated and predict the seven human activities by achieving 90% of accuracy. The model is later improved to recognize the random actions of the human.
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基于机器学习技术的人类活动识别与监测系统
人体活动识别是无线传感器网络中基于接收到的信号强度数据识别人体在一段时间内的活动是一项具有挑战性的研究课题。监控一个人的活动是很重要的,原因有很多。最近,机器学习方法显示出能够自动使用原始传感器数据对人类的行为进行分类。在这项工作中,数据集由使用三个传感器节点的七个活动的接收信号强度组成,这些节点通过使用监督机器学习算法进行训练以识别动作,并且使用无监督机器学习监控随机活动以识别人的奇怪动作。对所提出的基于机器学习的人类活动识别模型进行了评估,并预测了七种人类活动,准确率达到90%。该模型随后被改进以识别人类的随机行为。
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