Evaluation of Salient
Point Techniques

In image retrieval, global features related to color or
texture are commonly used to describe the image content. The problem with this
approach is that these global features cannot capture all parts of the images
having different characteristics. Therefore, local computation of image
information is necessary. By using salient points to represent local information,
more discriminative features can be computed. In this paper, we compare a
wavelet-based salient point extraction alogrithm with two corner detectors
using the criteria: repeatability rate and information content. We also show that
extracting color and texture information in the locations given by our salient
poitns provides significantly impreoved results in terms of retrieval accuracy,
computational complexity, and storage space of feature vectors as compared to
global feature approaches.
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