Title :
Highly Accurate Recognition of Human Postures and Activities Through Classification With Rejection
Author :
Wenlong Tang ; Sazonov, Edward S.
Author_Institution :
Univ. of Alabama, Tuscaloosa, AL, USA
Abstract :
Monitoring of postures and activities is used in many clinical and research applications, some of which may require highly reliable posture and activity recognition with desired accuracy well above 99% mark. This paper suggests a method for performing highly accurate recognition of postures and activities from data collected by a wearable shoe monitor (SmartShoe) through classification with rejection. Signals from pressure and acceleration sensors embedded in SmartShoe are used either as raw sensor data or after feature extraction. The Support vector machine (SVM) and multilayer perceptron (MLP) are used to implement classification with rejection. Unreliable observations are rejected by measuring the distance from the decision boundary and eliminating those observations that reside below rejection threshold. The results show a significant improvement (from 97.3% ± 2.3% to 99.8% ± 0.1%) in the classification accuracy after the rejection, using MLP with raw sensor data and rejecting 31.6% of observations. The results also demonstrate that MLP outperformed the SVM, and the classification accuracy based on raw sensor data was higher than the accuracy based on extracted features. The proposed approach will be especially beneficial in applications where high accuracy of recognition is desired while not all observations need to be assigned a class label.
Keywords :
body sensor networks; feature extraction; gait analysis; mechanoception; medical signal processing; multilayer perceptrons; patient monitoring; pressure sensors; signal classification; support vector machines; MLP; SVM; SmartShoe; acceleration sensor; activity monitoring; activity recognition; classification accuracy; classification with rejection; decision boundary; feature extraction; human activity; human posture; multilayer perceptron; posture monitoring; posture recognition; pressure sensor; raw sensor data; rejection threshold; support vector machine; wearable shoe monitor; Accuracy; Feature extraction; Footwear; Legged locomotion; Monitoring; Sensors; Support vector machines; Biomedical signal processing; classification algorithms; gait analysis; physical activity; risk of falling; wearable sensors;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2013.2287400