Recognizing human motion with multiple acceleration sensors 论文
2002引用 322
Blind Source Separation TechniquesNeural Networks and ApplicationsSpectroscopy and Chemometric Analyses
摘要
In this paper experiments with acceleration sensors are described for human activity recognition of a wearable device user. The use of principal component analysis and independent component analysis with a wavelet transform is tested for feature generation. Recognition of human activity is examined with a multilayer perceptron classifier. Best classification results for recognition of different human motion were 83-90%, and they were achieved by utilizing independent component analysis and principal component analysis. The difference between these methods turned out to be negligible.