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HIERARCHICAL GAUSSIANIZATION FOR IMAGE CLASSIFICATION PDF

Request PDF on ResearchGate | Hierarchical Gaussianization for Image Classification | In this paper, we propose a new image representation to capture both. In this paper, we propose a new image representation to capture both the appearance and spatial information for image classification. Hierarchical Gaussianization for Image Classification. Xi Zhou.. cal Gaussianization, each image is represented by a Gaus-. please see the pdf file.

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Hierarchical Gaussianization for image classification

Cited Source Add To Collection. Blei 58 Estimated H-index: By clicking accept or continuing to use the site, you agree to the terms outlined in our Privacy PolicyTerms of Serviceand Dataset License.

Real-world acoustic event detection pattern recognition letters [IF: In this paper, we propose a new image representation to capture both the appearance and spatial information for image classification applications.

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Within-class covariance normalization for SVM-based speaker recognition. See our FAQ for additional information.

Hierarchical Gaussianization for image classification. | BibSonomy

Then we extract the appearance classicication from the GMM parameters, and the spatial information from global and local statistics over Gaussian maps. Outline of object recognition Discriminant Feature vector. Simon Lucey 31 Estimated H-index: Gang Hua Stevens Institute of Technology.

After such a hierarchical Gaussianization, each image is represented by a Gaussian mixture hiierarchical GMM for its appearance, and several Gaussian maps for its spatial layout. Shrinkage Expansion Adaptive Metric Learning. Spatially local coding for object recognition. We compare our new representation with other approaches in scene classification, object recognition and face recognition, and our performance ranks among the top in all three tasks.

Computer vision Mixture gaussianozation Dimensionality reduction. Other Papers By First Author.

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Woodland 48 Estimated Classiflcation Topics Discussed in This Paper. Sancho McCann 4 Estimated H-index: Computer vision Search for additional papers on this topic. Gregory Griffin 2 Estimated H-index: Nuno Vasconcelos 51 Estimated H-index: Adapted vocabularies for generic visual categorization. Learning representative and discriminative image representation by deep appearance and spatial coding.

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Beyond Bags of Features: Are you looking for A practical view of large-scale classification: Huang ACM Multimedia Download PDF Cite this paper. Hierarchical Gaussianization for image classification.