Comparative study on classifying human activities with miniature inertial and magnetic sensors

被引:411
作者
Altun, Kerem [1 ]
Barshan, Billur [1 ]
Tuncel, Orkun [1 ]
机构
[1] Bilkent Univ, Dept Elect & Elect Engn, TR-06800 Ankara, Turkey
关键词
Inertial sensors; Gyroscope; Accelerometer; Magnetometer; Activity recognition and classification; Feature extraction; Feature reduction; Bayesian decision making; Rule-based algorithm; Decision tree; Least-squares method; k-Nearest neighbor; Dynamic time warping; Support vector machines; Artificial neural networks; HUMAN MOTION ANALYSIS; PHYSICAL-ACTIVITY; CLASSIFICATION; ACCELEROMETER; VALIDATION; DESIGN; SYSTEM; GYROSCOPE; POSTURE; PEOPLE;
D O I
10.1016/j.patcog.2010.04.019
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper provides a comparative study on the different techniques of classifying human activities that are performed using body-worn miniature inertial and magnetic sensors. The classification techniques implemented and compared in this study are: Bayesian decision making (BDM), a rule-based algorithm (RBA) or decision tree, the least-squares method (LSM), the k-nearest neighbor algorithm (k-NN), dynamic time warping (DTW), support vector machines (SVM), and artificial neural networks (ANN). Human activities are classified using five sensor units worn on the chest, the arms, and the legs. Each sensor unit comprises a tri-axial gyroscope, a tri-axial accelerometer, and a tri-axial magnetometer. A feature set extracted from the raw sensor data using principal component analysis (PCA) is used in the classification process. A performance comparison of the classification techniques is provided in terms of their correct differentiation rates, confusion matrices, and computational cost, as well as their preprocessing, training, and storage requirements. Three different cross-validation techniques are employed to validate the classifiers. The results indicate that in general, BDM results in the highest correct classification rate with relatively small computational cost. (C) 2010 Elsevier Ltd. All rights reserved.
引用
收藏
页码:3605 / 3620
页数:16
相关论文
共 69 条
[21]   Detection of posture and motion by accelerometry: a validation study in ambulatory monitoring [J].
Foerster, F ;
Smeja, M ;
Fahrenberg, J .
COMPUTERS IN HUMAN BEHAVIOR, 1999, 15 (05) :571-583
[22]  
Hagan M. T., 1997, Neural network design
[23]   Systematic review of definitions and methods of measuring falls in randomised controlled fall prevention trials [J].
Hauer, K ;
Lamb, SE ;
Jorstad, EC ;
Todd, C ;
Becker, C .
AGE AND AGEING, 2006, 35 (01) :5-10
[24]  
Haykin S. S., 1994, Neural Networks: A Comprehensive Foundation
[25]   A wireless body area network of intelligent motion sensors for computer assisted physical rehabilitation [J].
Jovanov E. ;
Milenkovic A. ;
Otto C. ;
De Groen P.C. .
Journal of NeuroEngineering and Rehabilitation, 2 (1)
[26]   Gesture spotting with body-worn inertial sensors to detect user activities [J].
Junker, Holger ;
Amft, Oliver ;
Lukowicz, Paul ;
Troester, Gerhard .
PATTERN RECOGNITION, 2008, 41 (06) :2010-2024
[27]   Comparison of low-complexity fall detection, algorithms for body attached accelerometers [J].
Kangas, Maarit ;
Konttila, Antti ;
Lindgren, Per ;
Winblad, Ilkka ;
Jamsa, Timo .
GAIT & POSTURE, 2008, 28 (02) :285-291
[28]   Implementation of a real-time human movement classifier using a triaxial accelerometer for ambulatory monitoring [J].
Karantonis, DM ;
Narayanan, MR ;
Mathie, M ;
Lovell, NH ;
Celler, BG .
IEEE TRANSACTIONS ON INFORMATION TECHNOLOGY IN BIOMEDICINE, 2006, 10 (01) :156-167
[29]  
Kern N, 2003, LECT NOTES COMPUT SC, V2875, P220
[30]  
Kiani K, 1997, Technol Health Care, V5, P307