Perpetual consistency improves image retrieval performance
Proceedings of the 24th annual international ACM SIGIR conference on Research and development in information retrieval
Similarity measures for binary and numerical data: a survey
International Journal of Knowledge Engineering and Soft Data Paradigms
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Texture is widely used in CBIR, and there have been a number of studies over the years to establish which features are perceptually significant. However, it is still difficult to retrieve reliably images that the human user would agree are "similar". This paper reviews a range of computational methods, and compares their performance in classifying and retrieving images from the Brodatz set. Their performance is then related to the combined ranking of "similar" images from the same dataset, obtained from experiments where human volunteers were asked to identify which images were most like each of the Brodatz images. The full set of 112 images was used. We conclude that no one method consistently returns retrievals which the human user would agree were similar across the full range of textures, but that statistical methods appear to perform better overall. We propose a subset of the Brodatz images for comparison of retrieval methods, based on the correlation between individuals' rankings.