Towards Semantic and Effective Visual Codebooks
| AUTHOR | Lopez-Sastre, Roberto Javier; L. Pez-Sastre, Roberto Javier |
| PUBLISHER | LAP Lambert Academic Publishing (12/08/2011) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
This book focuses on the study of visual vocabularies for category-level object recognition. Our aim is not just to obtain more discriminative and more compact visual codebooks, but to bridge the gap between visual features and semantic concepts. A novel approach for obtaining class representative visual words is presented. It is based on a maximisation procedure, i.e. the Cluster Precision Maximisation, of a novel cluster precision criterion, and on an adaptive threshold refinement scheme for agglomerative clustering algorithms based on correlation clustering techniques. A novel clustering aggregation based approach for building effective visual vocabularies is described too. It consist of a novel framework for incorporating meaningful spatial coherency among the local features into the visual codebook construction. We also propose an efficient high-dimensional data clustering algorithm, the Fast Reciprocal Nearest Neighbours. Finally, we release a new database of images called Image Collection of Annotated Real-world Objects (ICARO), which is especially designed for evaluating category-level object recognition systems.
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Product Format
Product Details
ISBN-13:
9783846594087
ISBN-10:
3846594083
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
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Page Count:
168
Carton Quantity:
48
Product Dimensions:
6.00 x 0.39 x 9.00 inches
Weight:
0.56 pound(s)
Feature Codes:
Annotated
Country of Origin:
US
Subject Information
BISAC Categories
Computers | Information Technology
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publisher marketing
This book focuses on the study of visual vocabularies for category-level object recognition. Our aim is not just to obtain more discriminative and more compact visual codebooks, but to bridge the gap between visual features and semantic concepts. A novel approach for obtaining class representative visual words is presented. It is based on a maximisation procedure, i.e. the Cluster Precision Maximisation, of a novel cluster precision criterion, and on an adaptive threshold refinement scheme for agglomerative clustering algorithms based on correlation clustering techniques. A novel clustering aggregation based approach for building effective visual vocabularies is described too. It consist of a novel framework for incorporating meaningful spatial coherency among the local features into the visual codebook construction. We also propose an efficient high-dimensional data clustering algorithm, the Fast Reciprocal Nearest Neighbours. Finally, we release a new database of images called Image Collection of Annotated Real-world Objects (ICARO), which is especially designed for evaluating category-level object recognition systems.
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$87.21
