使用多个智能手机传感器的人类活动识别

Abdul Kadar Muhammad Masum, Arnab Barua, Erfanul Hoque Bahadur, Mohammad Robiul Alam, Md. Akib Uz Zaman Chowdhury, M. S. Alam
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引用次数: 8

摘要

由于智能手机中各种传感器的可用性,数百万人用于通信,因此确定了数据挖掘和机器学习的新研究领域。本文旨在通过智能手机传感器识别十种人类活动,即坐、走、慢跑、躺、上楼下楼、骑自行车、站立、蹲在厕所和摔倒。为了实现我们的模型,我们收集了三个用户关于他们日常活动的标记陀螺仪数据、加速度计数据、温度数据和湿度数据,并以1Hz频率汇总。然后,我们使用我们的训练数据集来推导一个预测活动识别的模型。我们的工作是高尚的,就我们的数据收集系统以及对新活动的识别而言,识别精度更高。这些工作具有广泛的应用范围,可以预测与体育活动有关的疾病,监测体育活动和老年人护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition Using Multiple Smartphone Sensors
Due to the availability of various sensors in the smartphones, used by millions of people for communication, a new research arena is identified for data mining and machine learning. This paper aims to recognise ten human activities, i.e., sitting, walking, jogging, lying, walking upstairs and downstairs, cycling, standing, squatting in a toilet and fallen down, through smartphone sensors. For the implementation of our models, we collected labeled Gyroscope data, Accelerometer data, Temperature data and Humidity data from three users regarding their daily activities and summarised in 1Hz frequency. Then we used our training dataset to deduct a model for the prediction of activity recognition. Our work is noble in term of our system of data collection along with recognition of new activities with higher accuracy in recognition. These works have a wide range of applications as it may predict disease related to physical activities, monitor physical activities and elderly care.
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