Abstract

Human activity recognition has been a hot topic in recent years. With the advances in sensor technology, there has been a growing interest in using smartphones equipped with a set of built-in sensors to solve tasks of activity recognition. However, in most previous studies, smartphones were used with a fixed position—like trouser pockets—during recognition, which limits the user behavior. In the position-independent cases, the recognition accuracy is not very satisfactory. In this paper, we studied human activity recognition with smartphones in different positions and proposed a new position-independent method called PACP (Parameters Adjustment Corresponding to smartphone Position), which can markedly improve the performance of activity recognition. In PACP, features were extracted from the raw accelerometer and gyroscope data to recognize the position of the smartphone first; then the accelerometer data were adjusted corresponding to the position; finally, the activities were recognized with the SVM (Support Vector Machine) model trained by the adjusted data. To avoid the interference of smartphone orientations, the coordinate system of the accelerometer was transformed to get more useful information during this process. Experimental results show that PACP can achieve an accuracy over 91%, which is more effective than previous methods.

Highlights

  • Human activity recognition plays a significant role in many fields, especially in health care, disease control, sports and fitness

  • The adjustment of horizontal acceleration is utilized to narrow the difference between the same activity in different positions, it can achieve this goal in Parameters Adjustment Corresponding to smartphone Position (PACP)

  • We presented a novel method called Parameters Adjustment Corresponding to smartphone Position (PACP) for position-independent activity recognition with smartphone sensors

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Summary

Method Using Smartphone Sensors

School of Computer and Software, Nanjing University of Information Science & Technology, Nanjing 210044, Jiangsu, China Jiangsu Collaborative Innovation Center on Atmospheric Environment and Equipment Technology, Nanjing 210044, Jiangsu, China Jiangsu Engineering Center of Network Monitoring, Nanjing University of Information Science & Received: 21 October 2016; Accepted: 12 December 2016; Published: 15 December 2016

Introduction
Related Work
The Design of PACP
Coordinate System Conversion
Position Recognition
Selection of Sensitive Features
Model Selection
Activity Recognition
Feature
Implementation and Evaluation
Data Collection
Evaluation of Position Recognition
Performance of PACP
82.37 The accuracy results of these algorithms are shown in
Results
Comparison
Discussion
Conclusions
Full Text
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