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Private Smart Space: Cost-Effective ADLs (Activities of Daily Livings) Recognition Based on Superset Transformation

机译:私有智能空间:基于超集变换的具有成本效益的ADL(日常生活活动)识别

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摘要

Aging population inspired the market on advanced real time caring for the elder in home setting, accurately recognizing human activities is a challenging task. Activities of daily living are good indicators for behavior recognition. In this paper, we describe a new method to deploy a cost-effective solution which can be run on embedded device as smart router. We use the open dataset, map the raw dataset into a sparse binary matrix, unique by the time line and activity tags. Decision tree algorithm is applied to train the model, in order to achieve the goal that simple comparison work to implement the model and get a quick respond at high accuracy. We evaluate our approach by 3-fold cross validation and achieve a time-slice accuracy of 98.45%.
机译:人口老龄化激发了针对老年人在家中进行高级实时护理的市场,准确地识别人类活动是一项艰巨的任务。日常生活活动是识别行为的良好指标。在本文中,我们描述了一种部署具有成本效益的解决方案的新方法,该解决方案可以在作为智能路由器的嵌入式设备上运行。我们使用开放数据集,将原始数据集映射到一个稀疏的二进制矩阵,该矩阵按时间轴和活动标签是唯一的。采用决策树算法对模型进行训练,以达到简化比较工作来实现模型并获得快速,高精度响应的目的。我们通过三重交叉验证来评估我们的方法,并实现了98.45%的时间切片准确性。

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