DocumentCode
55620
Title
Feature Selection and Activity Recognition System Using a Single Triaxial Accelerometer
Author
Gupta, Puneet ; Dallas, Tim
Author_Institution
Dept. of Electr. & Comput. Eng., Texas Tech Univ., Lubbock, TX, USA
Volume
61
Issue
6
fYear
2014
fDate
Jun-14
Firstpage
1780
Lastpage
1786
Abstract
Activity recognition is required in various applications such as medical monitoring and rehabilitation. Previously developed activity recognition systems utilizing triaxial accelerometers have provided mixed results, with subject-to-subject variability. This paper presents an accurate activity recognition system utilizing a body worn wireless accelerometer, to be used in the real-life application of patient monitoring. The algorithm utilizes data from a single, waist-mounted triaxial accelerometer to classify gait events into six daily living activities and transitional events. The accelerometer can be worn at any location around the circumference of the waist, thereby reducing user training. Feature selection is performed using Relief-F and sequential forward floating search (SFFS) from a range of previously published features, as well as new features introduced in this paper. Relevant and robust features that are insensitive to the positioning of accelerometer around the waist are selected. SFFS selected almost half the number of features in comparison to Relief-F and provided higher accuracy than Relief-F. Activity classification is performed using Naïve Bayes and k-nearest neighbor (k-NN) and the results are compared. Activity recognition results on seven subjects with leave-one-person-out error estimates show an overall accuracy of about 98% for both the classifiers. Accuracy for each of the individual activity is also more than 95%.
Keywords
Bayes methods; accelerometers; biomedical telemetry; body sensor networks; feature selection; gait analysis; medical signal processing; patient monitoring; real-time systems; signal classification; telemedicine; Naive Bayes; SFFS; accelerometer positioning sensitivity; activity classification accuracy; activity recognition accuracy; activity recognition system; body worn wireless accelerometer; daily living activities; daily living transitional events; feature selection accuracy; feature selection system; gait event classification; k-NN method; k-nearest neighbor; leave-one-person-out error estimates; medical monitoring; patient monitoring; patient rehabilitation; real-life application; relief-F; sequential forward floating search; single triaxial accelerometer; single waist-mounted triaxial accelerometer; subject-to-subject variability; user training reduction; Acceleration; Accelerometers; Accuracy; Fluctuations; Legged locomotion; Market research; Time series analysis; $k$ -nearest neighbor ( $k$ -NN) classifier; Accelerometer; Naïve Bayes classifier; Relief-F algorithm; activity recognition; detrended fluctuation analysis (DFA); error estimates; feature selection; leave-one-person-out (LOO) error; sequential forward floating search (SFFS) wrapper algorithm;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2014.2307069
Filename
6780615
Link To Document