Abstract

We propose to perform wearable sensors-based human physical activity recognition. This is further extended to an Internet-of-Things (IoT) platform which is based on a web-based application that integrates wearable sensors, smartphones, and activity recognition. To this end, a smartphone collects the data from wearable sensors and sends it to the server for processing and recognition of the physical activity. We collect a novel data set of 13 physical activities performed both indoor and outdoor. The participants are from both the genders where their number per activity varies. During these activities, the wearable sensors measure various body parameters via accelerometers, gyroscope, magnetometers, pressure, and temperature. These measurements and their statistical are then represented in features vectors that used to train and test supervised machine learning algorithms (classifiers) for activity recognition. On the given data set, we evaluate a number of widely known classifiers such random forests, support vector machine, and many others using the WEKA machine learning suite. Using the default settings of these classifiers in WEKA, we attain the highest overall classification accuracy of 90%. Consequently, such a recognition rate is encouraging, reliable, and effective to be used in the proposed platform.

Highlights

  • The Internet of Things (IoT) in recent years has gained significant importance in daily life

  • Using WiFi interface the particle photon board is connected to Raspberry Pi to collect the data and send it to ThingSpeak cloud for storage

  • Modern smartphones and smart watches are equipped with sensors such as a gyroscope, an accelerometer, a magnetometer, and a global positioning system (GPS)

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Summary

Introduction

The Internet of Things (IoT) in recent years has gained significant importance in daily life. Wearable sensors provide reliable and accurate information on human activities and behavior to ensure a sound and safe living environment.[6] The WIoT permits observing, tracking, and measuring individual functions in daily life This article extends this line of application by proposing a wearable sensor IoT platform to acquire the data and automatically recognize activities. Lack of physical activity can negatively affect physical fitness.[8] Recent studies show that the physical inactivity (aside from poor nutrition, smoking, and use of alcohol) is a significant cause of premature death.[9] This problem can be alleviated significantly with the help of physical activity tracking platforms To this end, the data acquired from them can be used in recognizing activities.

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New York
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