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Incremental Learning for Place Recognition in Dynamic Environments J. Luo, A. Pronobis, B. Caputo, and P. Jensfelt In Proceedings of the IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS07), San Diego, CA, USA, October 2007.
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Vision-based place recognition is a desirable feature for an autonomous mobile
system. In order to work in realistic scenarios, visual recognition algorithms should
be adaptive, i.e. should be able to learn from experience and adapt continuously
to changes in the environment. This paper presents a discriminative incremental
learning approach to place recognition. We use a recently introduced version of
the incremental SVM, which allows to control the memory requirements as the system
updates its internal representation. At the same time, it preserves the recognition
performance of the batch algorithm. In order to assess the method,
we acquired a database capturing the intrinsic variability of places over time.
Extensive experiments show the power and the potential of the approach.
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Created by: Andrzej Pronobis
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Last modified: 20-09-2009 00:26
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