Probabilistic models for supervised dictionary learning

CVPR(2010)

引用 47|浏览117
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摘要
Dictionary generation is a core technique of the bag-of-visual-words (BOV) models when applied to image categorization. Most of previous approaches generate dictionaries by unsupervised clustering techniques, e.g. k-means. However, the features obtained by such kind of dictionaries may not be optimal for image classification. In this paper, we propose a probabilistic model for supervised dictionary learning (SDLM) which seamlessly combines an unsupervised model (a Gaussian Mixture Model) and a supervised model (a logistic regression model) in a probabilistic framework. In the model, image category information directly affects the generation of a dictionary. A dictionary obtained by this approach is a trade-off between minimization of distortions of clusters and maximization of discriminative power of image-wise representations, i.e. histogram representations of images. We further extend the model to incorporate spatial information during the dictionary learning process in a spatial pyramid matching like manner. We extensively evaluated the two models on various benchmark dataset and obtained promising results.
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关键词
probabilistic models,image representation,pattern clustering,image matching,learning (artificial intelligence),supervised dictionary learning,dictionaries,unsupervised clustering techniques,image classification,bag-of-visual-words models,image-wise representations,spatial pyramid matching,histogram representations,dictionary generation,image categorization,probability,gaussian mixture model,learning artificial intelligence,mathematical model,machine learning,bag of visual words,kernel,probabilistic model,spatial information,principal component analysis,support vector machines,histograms,neodymium,probabilistic logic,logistic regression model,logistics,k means
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