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Human Activity Recognition System using Smart Phone based Accelerometer and Machine Learning

机译:基于智能手机的加速度计和机器学习的人类活动识别系统

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Human Activity Recognition (HAR) has gained significance importance due to its wide range of applications in security, healthcare, surveillance, virtual reality, control systems and automation. Sensors embedded in modern mobile phones enable unobtrusive detection of Activities of Daily Living (ADL). Various statistical and deep learning techniques for the automated detection of human activity have been presented recently. In this study, we have collected accelerometry data through a mobile phone carried by a user for number of days to classify ADL on the basis of exhibited movement into stationary, light ambulatory, intense ambulatory and abnormal classes. ADL such as walking, sitting and jogging etc. are performed and classified simultaneously by mobile phone application and users for comparative analysis. Collected data is given as an input to the trained model and analyzed by implementing the J48 classifier. Results reveal an accuracy score of around 70% for each activity class and it is noted that the classification was performed with an accuracy of above 80% for stationary activity. It is shown that ADL can be recognized with high accuracy using accelerometry data collected in a constrained environment and a single sensor. J48 classifier also correctly classified activities that have a strong correlation between them such as sitting on a chair and standing in stationary position. This work is significant for utilization in long term health monitoring systems that are capable of ensuring neurological health for masses through HAR and mobile phones embedded with accelerometers.
机译:由于其在安全,医疗保健,监控,虚拟现实,控制系统和自动化方面的广泛应用,人类活动识别(HAR)获得了重要意义。嵌入在现代手机中的传感器,可以不引人注目地检测日常生活活动(ADL)。最近介绍了用于自动检测人类活动的各种统计和深度学习技术。在这项研究中,我们通过用户携带的移动电话收集了加速度数据,以便在展出的运动进入固定式,轻微的动态,强烈的动态和异常课程的基础上进行分类。通过移动电话应用和用户进行比较分析,执行和分类等步行,坐姿和慢跑等。收集的数据作为训练模型的输入给出,并通过实现J48分类器进行分析。结果显示每种活动类别约为70%的精度得分,并指出,对于静止活动的准确性,以高于80%的准确度进行分类。结果表明,可以使用收集在约束环境和单个传感器中收集的加速度测定数据来识别ADL。 J48分类器还正确的分类活动,这些活动与它们之间具有强烈相关性,例如坐在椅子上,站在静止位置。这项工作对于长期健康监测系统的利用是重要的,该系统能够通过嵌入加速度计的Har和移动电话来确保群众的神经系统健康。

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