Efficient Cbir Using Color Histogram Processing

@inproceedings{Sharma2012EfficientCU,
  title={Efficient Cbir Using Color Histogram Processing},
  author={S. S. V. N. Sharma and Surabhi Rawat and Savita Singh},
  year={2012}
}
The need for efficient content-based image retrieval system has increased hugely. Efficient and effective retrieval techniques of images are desired because of the explosive growth of digital images. content based image retrieval (CBIR) is a promising approach because of its automatic indexing retrieval based on their semantic features and visual appearance. The similarity of images depends on the feature representation.However users have difficulties in representing their information needs in… 
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