Abstract

Motion analysis is an important topic in the monitoring of physical activities and recognition of neurological disorders. The present paper is devoted to motion assessment using accelerometers inside mobile phones located at selected body positions and the records of changes in the heart rate during cycling, under different body loads. Acquired data include 1293 signal segments recorded by the mobile phone and the Garmin device for uphill and downhill cycling. The proposed method is based upon digital processing of the heart rate and the mean power in different frequency bands of accelerometric data. The classification of the resulting features was performed by the support vector machine, Bayesian methods, k-nearest neighbor method, and neural networks. The proposed criterion is then used to find the best positions for the sensors with the highest discrimination abilities. The results suggest the sensors be positioned on the spine for the classification of uphill and downhill cycling, yielding an accuracy of 96.5% and a cross-validation error of 0.04 evaluated by a two-layer neural network system for features based on the mean power in the frequency bands and Hz. This paper shows the possibility of increasing this accuracy to 98.3% by the use of more features and the influence of appropriate sensor positioning for motion monitoring and classification.

Highlights

  • Recognition of human activities based on acceleration data [1,2,3,4,5,6] and their analysis by signal processing methods, computational intelligence, and machine learning, forms the basis of many systems for rehabilitation monitoring and evaluation of physical activities

  • Records were subsequently stored to the Garmin Connect website, exported in the specific Training Center (TCX) format, converted to the comma-separated values (CSV), and imported into the MATLAB software for further processing

  • This paper has presented the use of selected methods of machine learning and digital signal processing in the evaluation of motion and physical activities using wireless sensors for acquiring accelerometric and heart rate data

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Summary

Introduction

Recognition of human activities based on acceleration data [1,2,3,4,5,6] and their analysis by signal processing methods, computational intelligence, and machine learning, forms the basis of many systems for rehabilitation monitoring and evaluation of physical activities. Methods of motion detection and its analysis by accelerometers and global positioning systems (GPS) are used for studies of physical activities including cycling [9,10,11,12,13,14], as assessed in this paper. Sensor systems used for motion monitoring include wireless motion sensors (accelerometers and gyrometers) [15,16], camera systems (thermal, depth and color cameras) [9,17], ultrasound systems [18], and satellite positioning systems [12,13,14]. There are many studies devoted to the analysis of these signals, markerless systems [20], and associated three-dimensional modelling

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