期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Android IoT Lifelog System and Its Application to Motion Inference
1
作者 munkhtsetseg Jeongwook Seo 《Computer Systems Science & Engineering》 SCIE EI 2023年第6期2989-3003,共15页
In social science,health care,digital therapeutics,etc.,smartphone data have played important roles to infer users’daily lives.However,smartphone data col-lection systems could not be used effectively and widely beca... In social science,health care,digital therapeutics,etc.,smartphone data have played important roles to infer users’daily lives.However,smartphone data col-lection systems could not be used effectively and widely because they did not exploit any Internet of Things(IoT)standards(e.g.,oneM2M)and class labeling methods for machine learning(ML)services.Therefore,in this paper,we propose a novel Android IoT lifelog system complying with oneM2M standards to collect various lifelog data in smartphones and provide two manual and automated class labeling methods for inference of users’daily lives.The proposed system consists of an Android IoT client application,an oneM2M-compliant IoT server,and an ML server whose high-level functional architecture was carefully designed to be open,accessible,and internation-ally recognized in accordance with the oneM2M standards.In particular,we explain implementation details of activity diagrams for the Android IoT client application,the primary component of the proposed system.Experimental results verified that this application could work with the oneM2M-compliant IoT server normally and provide corresponding class labels properly.As an application of the proposed system,we also propose motion inference based on three multi-class ML classifiers(i.e.,k nearest neighbors,Naive Bayes,and support vector machine)which were created by using only motion and location data(i.e.,acceleration force,gyroscope rate of rotation,and speed)and motion class labels(i.e.,driving,cycling,running,walking,and stil-ling).When compared with confusion matrices of the ML classifiers,the k nearest neighbors classifier outperformed the other two overall.Furthermore,we evaluated its output quality by analyzing the receiver operating characteristic(ROC)curves with area under the curve(AUC)values.The AUC values of the ROC curves for all motion classes were more than 0.9,and the macro-average and micro-average ROC curves achieved very high AUC values of 0.96 and 0.99,respectively. 展开更多
关键词 ANDROID Internet of Things lifelog motion inference oneM2M
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部