A Mobile Cloud Collaboration Fall Detection System Based on Ensemble Learning

Tong Wu, Yang Gu, Yiqiang Chen, Yunlong Xiao, Jiwei Wang
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引用次数: 13

Abstract

Falls are one of the major causes of accidental or unintentional injury death worldwide. Therefore, this paper proposes a reliable fall detection algorithm and a mobile cloud collaboration system for fall detection. The algorithm is an ensemble learning method based on decision tree, named Fall-detection Ensemble Decision Tree (FEDT). The mobile cloud collaboration system is composed of three stages: 1) mobile stage: a light-weighted threshold method is used to filter out activities of daily livings (ADLs), 2) collaboration stage: TCP protocol is used to transmit data to cloud and meanwhile features are extracted in the cloud, 3) cloud stage: the model trained by FEDT is deployed to give the final detection result with the extracted features. Experiments show that the proposed FEDT outperforms the others' over 1-3% both on sensitivity and specificity and has superior robustness on different devices.
基于集成学习的移动云协同跌倒检测系统
跌倒是全世界意外或非故意伤害死亡的主要原因之一。因此,本文提出了一种可靠的跌倒检测算法和一种移动云协同跌倒检测系统。该算法是一种基于决策树的集成学习方法,称为跌倒检测集成决策树(FEDT)。移动云协作系统由三个阶段组成:1)移动阶段:使用轻量级阈值法过滤日常生活活动(ADLs); 2)协作阶段:使用TCP协议将数据传输到云端,同时在云中提取特征;3)云阶段:部署FEDT训练的模型,利用提取的特征给出最终的检测结果。实验表明,所提出的FEDT在灵敏度和特异度上均优于其他方法,且在不同的器件上具有优异的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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