Automatic scene recognition for low-resource devices using evolving classifiers

Andreu, Javier and Dutta Baruah, Rashmi and Angelov, Plamen (2011) Automatic scene recognition for low-resource devices using evolving classifiers. In: 2011 IEEE International Conference on Fuzzy Systems (FUZZ). IEEE, TWN, pp. 2779-2785. ISBN 978-1-4244-7315-1

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Abstract

In this paper an original approach is proposed which makes possible autonomous scenes recognition performed on-line by an evolving self-learning classifier. Existing approaches for scene recognition are off-line and used in intelligent albums for picture categorization/selection. The emergence of powerful mobile platforms with camera on board and sensor-based autonomous (robotic) systems is pushing forward the requirement for efficient self-learning and adaptive/evolving algorithms. Fast real-time and online algorithms for categorisation of the real world environment based on live video stream are essential for understanding and situation awareness as well as for localization and context awareness. In scene analysis the critical problem is feature extraction mechanism for a quick description of the scene. In this paper we apply a well known technique called spatial envelop or GIST. Visual scenes can be quite different but very often they can be grouped in similar types/categories. For example, pictures from different cities across the Globe, e.g. Tokyo, Vancouver, New York Moscow, Dusseldorf, etc. bear the similar pattern of an urban scene high rise buildings, despite the differences in the architectural style. Same applies for the beaches of Miami, Maldives, Varna, Costa del Sol, etc. One assumption based on which such automatic video classifiers can be build is to pre-train them using a large number of such images from different groups. Variety of possible scenes suggests the limitations of such an approach. Therefore, we use in this paper the recently propose evolving fuzzy rule-based classifier, simpleClass, which is self learning and thus updates its rules and categories descriptions with each new image. In addition, it is fully recursive, computationally efficient and yet linguistically transparent.

Item Type:
Contribution in Book/Report/Proceedings
Uncontrolled Keywords:
/dk/atira/pure/researchoutput/libraryofcongress/qa75
Subjects:
?? HUMAN ACTIVITY RECOGNITION FUZZY CLASSIFIERSEVOLVING SYSTEMSWEARABLE SENSORSACCELEROMETERSCOMPUTING, COMMUNICATIONS AND ICTQA75 ELECTRONIC COMPUTERS. COMPUTER SCIENCE ??
ID Code:
53150
Deposited By:
Deposited On:
09 Mar 2012 03:33
Refereed?:
Yes
Published?:
Published
Last Modified:
15 Sep 2023 04:51