Online Parameter Selection for Large Scale Image Search
Description
This work explores using online learning for selecting the best parameters
of Bag of Words systems when searching large scale image collections. We
study two algorithms for no regret online learning: Hedge algorithm that
works in the full information setting, and Exp3 that works in the bandit
setting. We use these algorithms for parameter selection in two scenarios:
(a) using a training set to obtain weights for the different parameters,
then either choosing the parameter setting with maximum weight or combining
their results with weighted majority vote; (b) working fully online by
selecting a parameter combination at every time step. We demonstrate the
usefulness of online learning using experiments on four different real
world datasets.
References
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Mohamed Aly.
Online Learning for Parameter Selection in Large Scale Image Search,
4th IEEE Online Learning for Computer Vision Workshop (OLCV),
IEEE Conference on Computer Vision and Pattern Recognition (CVPR),
San Francisco, June 2010.
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