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Feedback-based metric learning for activity recognition

Version 2 2024-06-05, 02:10
Version 1 2018-09-27, 18:18
journal contribution
posted on 2024-06-05, 02:10 authored by X Wang, Y Xu, H Hu, M Liu, Gang LiGang Li
© 2018 Elsevier Ltd Mobile activity recognition is an effective approach to understanding human context in real time. Existing methods based on supervised learning that require a large amount of training samples for building activity recognition models. The collection of labeled training samples is a boring process and most users are reluctant to get involved. Crowdsourcing is a simple and potential approach to collecting the training samples and building accurate activity recognizers. Since different people usually have different physical features and behavior patterns, an accurate activity recognition model cannot be constructed directly from the training samples collected by crowdsourcing. In this paper, we have proposed a Mixture Expert Model for Activity Recognition (MEMAR) based on feedback and crowdsourcing samples. The proposed model can continuously discover the difference between user activity and crowdsourcing samples. Then we update activity recognition models with the discovered differences. A mobile can correctly utilize crowdsourcing samples for recognition model construction with MEMAR and can also track and recognize mobile users’ behavior dynamics. The experiments based on a smartphone dataset verify the validity of MEMAR. We believe MEMAR provides a basis for context-aware mobile applications.

History

Journal

Expert Systems with Applications

Volume

162

Article number

ARTN 112209

Location

Amsterdam, The Netherlands

ISSN

0957-4174

eISSN

1873-6793

Language

English

Notes

In Press

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2018, Elsevier Ltd.

Publisher

PERGAMON-ELSEVIER SCIENCE LTD