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Human Activity Recognition from Smart-Phone Sensor Data using a Multi-Class Ensemble Learning in Home Monitoring

机译:人类活动识别智能手机传感器数据在家庭监控中使用多级集合学习

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Home monitoring of chronically ill or elderly patient can reduce frequent hospitalisations and hence provide improved quality of care at a reduced cost to the community, therefore reducing the burden on the healthcare system. Activity recognition of such patients is of high importance in such a design. In this work, a system for automatic human physical activity recognition from smart-phone inertial sensors data is proposed. An ensemble of decision trees framework is adopted to train and predict the multi-class human activity system. A comparison of our proposed method with a multi-class traditional support vector machine shows significant improvement in activity recognition accuracies.
机译:慢性病或老年患者的家庭监测可以减少频繁的住院治疗,因此可以以降低的成本为社区提供改善的护理质量,从而降低了医疗保健系统的负担。这种患者的活动识别在这种设计中具有很高的重要性。在这项工作中,提出了一种来自智能手机惯性传感器数据的自动人体体力活动识别系统。采用决策树框架的集合来培训和预测多级人类活动系统。我们的提出方法与多级传统支持向量机的比较显示了活动识别精度的显着提高。

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