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Multi-Sensor Mobile Platform for the Recognition of Activities of Daily Living and their Environments based on Artificial Neural Networks

机译:多传感器移动平台,用于识别日常生活和基于人工神经网络的环境

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The recognition of Activities of Daily Living (ADL) and their environments based on sensors available in off-the-shelf mobile devices is an emerging topic. These devices are capable to acquire and process the sensors' data for the correct recognition of the ADL and their environments, providing a fast and reliable feedback to the user. However, the methods implemented in a mobile application for this purpose should be adapted to the low resources of these devices. This paper focuses on the demonstration of a mobile application that implements a framework, that forks their implementation in several modules, including data acquisition, data processing, data fusion and classification methods based on the sensors' data acquired from the accelerometer, gyroscope, magnetometer, microphone and Global Positioning System (GPS) receiver. The framework presented is a function of the number of sensors available in the mobile devices and implements the classification with Deep Neural Networks (DNN) that reports an accuracy between 58.02% and 89.15%.
机译:基于现成移动设备中可用的传感器的日常生活(ADL)和其环境的认识是一个新兴主题。这些设备能够获取和处理传感器数据以正确识别ADL及其环境,为用户提供快速且可靠的反馈。然而,在移动应用程序中实现的方法应该适用于这些设备的低资源。本文重点介绍了实现框架的移动应用程序的演示,它伪造了它们在若干模块中的实现,包括基于从加速度计,陀螺仪,磁力计的传感器数据获取的数据采集,数据处理,数据融合和分类方法,麦克风和全球定位系统(GPS)接收器。呈现的框架是移动设备中可用的传感器数量的函数,并利用深神经网络(DNN)进行分类,报告58.02%和89.15%之间的精度。

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