Supervised local sparse coding of sub-image features for image retrieval

Published: Sep 1, 2012
Abstract
The success of sparse representations in image modeling and recovery has motivated its use in computer vision applications. Image retrieval and classification tasks require extracting features that discriminate different image classes. State-of-the-art object recognition methods based on sparse coding use spatial pyramid features obtained from dense descriptors. In this paper, we develop a feature extraction method that uses multiple...
Paper Details
Title
Supervised local sparse coding of sub-image features for image retrieval
Published Date
Sep 1, 2012
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