Online classifier construction algorithm for human activity detection using a tri-axial accelerometer
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摘要
This paper presents an online construction algorithm for constructing fuzzy basis function (FBF) classifiers that are capable of recognizing different types of human daily activities using a tri-axial accelerometer. The activity recognition is based on the acceleration data collected from a wireless tri-axial accelerometer module mounted on users’ dominant wrists. Our objective is to enable users to: (1) online add new training samples to the existing classes for increasing the recognition accuracy, (2) online add additional classes to be recognized, and (3) online delete an existing class. For this objective we proposed a dynamic linear discriminant analysis (LDA) which can dynamically update the scatter matrices for online constructing FBF classifiers without storing all the training samples in memory. Our experimental results have successfully validated the integration of the FBF classifier with the proposed dynamic LDA can reduce computational burden and achieve satisfactory recognition accuracy.
论文关键词:Acceleration data,Activity recognition,Feature extraction,Fuzzy basis function,Linear discriminant analysis,Tri-axial accelerometer
论文评审过程:Available online 25 May 2008.
论文官网地址:https://doi.org/10.1016/j.amc.2008.05.099