Recognising daily activity patterns of people from low-level sensory data is an important problem. Traditional approaches typically rely on generative models such as the hidden Markov models and training on fully labelled data. While activity data can be readily acquired from pervasive sensors, e.g. in smart environments, providing manual labels to support fully supervised learning is often expensive. In this paper, we propose a new approach based on partially-supervised training of discriminative sequence models such as the conditional random field (CRF) and the maximum entropy Markov model (MEMM). We show that the approach can reduce labelling effort, and at the same time, provides us with the flexibility and accuracy of the discriminative framework. Our experimental results in the video surveillance domain illustrate that these models can perform better than their generative counterpart (i.e. the partially hidden Markov model), even when a substantial amount of labels are unavailable.
History
Pagination
903-912
Location
Hanoi, Vietnam
Start date
2008-12-15
End date
2008-12-19
ISSN
0302-9743
ISBN-13
9783540891963
ISBN-10
354089196X
Language
eng
Publication classification
E1.1 Full written paper - refereed
Copyright notice
2008, Springer
Extent
117
Editor/Contributor(s)
Ho TB, Zhou ZH
Title of proceedings
PRICAI 2008 : Trends in Artificial Intelligence : 10th Pacific Rim International Conference on Artificial Intelligence, Hanoi, Vietnam, December 15-19, 2008, proceedings
Event
Pacific Rim International Conference on Artificial Intelligence (10th : 2008 : Hanoi, Vietnam)