Multiscale branch-and-bound image database search
- 15 January 1997
- proceedings article
- Published by SPIE-Intl Soc Optical Eng
- p. 133-144
- https://doi.org/10.1117/12.263402
Abstract
This paper presents a formal framework for designing search algorithms which can identify target images by the spatial distribution of color, edge and texture attributes. The framework is based on a multiscale representation of both the image data, and the associated parameter space that must be searched. We defined a general form for the distance function which insures that branch and bound search can be used to find the globally optimal match. Our distance function depends on the choice of a convex measure of feature distance. For this purpose, we propose the L1 norm and some other alternative choices such as the Kullback-Liebler and divergence distances. Experimental results indicate that the multiscale approach can improve search performance with minimal computational cost.Keywords
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