Co-occurrence map: Quantizing multidimensional texture histograms

Co-occurrence matrices, multidimensional co-occurrence histograms, and histograms reduced by vector quantization with the self-organizing map were compared in the classification of monochrome and color textures. Increasing the histogram dimensionality improved the classification. The highest accuracy was obtained with the reduced histograms.

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