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Smartphone-Based Human Activity Recognition Using Bagging and Boosting

机译:基于智能手机的人类活动识别使用袋装和提升

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摘要

In today’s healthcare applications, the use of mobile technologies brings together physicians and patients for intelligent and automatic monitoring of daily clinical activities, remote life assistants, and preventive care, especially for the elderly and those under medical control. As smartphones become an important part of our everyday life, they are ever more employed in human activities recognition (HAR) including the monitoring of personal health care and wellbeing. However, HAR is complex and it is important to use the best technology and learn about human activity using machine learning. The purpose of this paper is to develop a HAR system based on the smartphone sensors’ data using Bagging and Adaboost ensemble classifiers. The experimental results for the HAR data have been evaluated after performing different data mining techniques. For each subject, the total classification accuracy, the F-measure, and the ROC area were calculated. Adaboost ensemble classifiers algorithm improved significantly the performance of smartphone-based HAR, combined with SVM, it reached 97.44% accuracy compared to the rest of the classifiers. The proposed algorithm of Adaboost SVM can lead to an accurate HAR for elderly and disabled patients who need continuous care as well as it is a tool that supports the decisions of all medical practitioners.
机译:在当今的医疗保健应用中,使用移动技术的使用汇集了医生和患者,以智能,自动监测日常临床活动,远程救生员和预防性护理,特别是对于老年人和医疗控制下的人。随着智能手机成为我们日常生活的重要组成部分,它们在人类活动中更受雇(Har),包括监测个人医疗保健和福祉。然而,Har是复杂的,使用最佳技术并使用机器学习了解人类活动是很重要的。本文的目的是使用袋装和adaboost集合分类器基于智能手机传感器的数据开发一个HAR系统。在执行不同的数据挖掘技术之后,已经评估了HAR数据的实验结果。对于每个主题,计算总分类准确性,F测量和ROC区域。 Adaboost集合分类器算法显着提高了基于智能手机的Har,与SVM相结合的性能,与其他分类器相比,精度达到97.44%。所提出的Adaboost SVM算法可以导致老年人和残疾患者的准确,需要持续照顾,也是一种支持所有医生决定的工具。

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