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Image classification: Classifying distributions of visual features
Hong Kong August 20-August 24
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICPR.2006.68318th International Conference on Patt ...
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Prateek Sarkar, Perceptual Document Analysis Palo Alto Research Center, Palo Alto, California
We classify an image by generating a list of salient visual features present in the luminance channel, and matching the resulting variable-length feature list to categoryspecific generative models for such features. To facilitate quick computation, we use thresholded Viola-Jones rectangular features, each represented by a five-dimensional descriptor. For each image category, a probability distribution for feature-lists is given by a latent conditional independence (LCI) model and classification is maximum likelihood. On the NIST tax forms database [3], where intracategory variations include variable scan-lightness, skew, noise, and machine-printed form-filling, our method improves performance over published results, while requiring very little training data, and without relying on an extensive set of handcrafted features.
Citation:
Prateek Sarkar, "Image classification: Classifying distributions of visual features," icpr, vol. 2, pp.472-475, 18th International Conference on Pattern Recognition (ICPR'06) Volume 2, 2006
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