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Human Activity Recognition using Smartphone Sensors and Beacon-based Indoor Localization for Ambient Assisted Living Systems

机译:使用智能手机传感器和基于信标的室内定位进行环境辅助生活系统的人类活动识别

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The aim of this paper is to present a novel indoor human activity recognition system designated for ambient assisted living environments. To overcome the drawbacks of current solutions in terms of equipment costs and computational complexity, we propose a simple yet robust activity recognition system that combines the output of an activity classification algorithm using smartphone sensors such as accelerometer and gyroscope with a Beacon-based indoor localization predictor to detect more complex activities based on a decision rule system. For the multiclass classification algorithm we employ a ConvLSTM algorithm, while for the positioning system we propose an ensemble based solution combining Multilayer Perceptron with Gradient Boosted Regression and k Nearest Neighbors. Our solution has been tested in a controlled home environment setup achieving an average localization error of 0.4m while for the final activity recognition system we report an accuracy of 91.0% concluding that the proposed solution is accurate enough to be integrated as a monitoring tool facility within ambient assisted living systems.
机译:本文的目的是提出一种新颖的室内人类活动识别系统,专门用于环境辅助生活环境。为了克服当前解决方案在设备成本和计算复杂性方面的弊端,我们提出了一个简单而强大的活动识别系统,该系统将使用智能手机传感器(如加速度计和陀螺仪)的活动分类算法的输出与基于信标的室内定位预测器相结合以基于决策规则系统检测更复杂的活动。对于多类分类算法,我们使用ConvLSTM算法,而对于定位系统,我们提出一种基于整体的解决方案,将带有梯度提升回归的多层感知器和k个最近邻居结合在一起。我们的解决方案已在受控的家庭环境中进行了测试,平均定位误差为0.4m,而对于最终的活动识别系统,我们报告的准确度为91.0%,这表明所提出的解决方案足够准确,可以集成为监控工具环境辅助生活系统。

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