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Human Activity Recognition by Combining a Small Number of Classifiers | IEEE Journals & Magazine | IEEE Xplore

Human Activity Recognition by Combining a Small Number of Classifiers


Abstract:

We consider the problem of daily human activity recognition (HAR) using multiple wireless inertial sensors, and specifically, HAR systems with a very low number of sensor...Show More

Abstract:

We consider the problem of daily human activity recognition (HAR) using multiple wireless inertial sensors, and specifically, HAR systems with a very low number of sensors, each one providing an estimation of the performed activities. We propose new Bayesian models to combine the output of the sensors. The models are based on a soft outputs combination of individual classifiers to deal with the small number of sensors. We also incorporate the dynamic nature of human activities as a first-order homogeneous Markov chain. We develop both inductive and transductive inference methods for each model to be employed in supervised and semisupervised situations, respectively. Using different real HAR databases, we compare our classifiers combination models against a single classifier that employs all the signals from the sensors. Our models exhibit consistently a reduction of the error rate and an increase of robustness against sensor failures. Our models also outperform other classifiers combination models that do not consider soft outputs and an Markovian structure of the human activities.
Published in: IEEE Journal of Biomedical and Health Informatics ( Volume: 20, Issue: 5, September 2016)
Page(s): 1342 - 1351
Date of Publication: 17 July 2015

ISSN Information:

PubMed ID: 26208368

Funding Agency:


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