Corpus ID: 8170558

Content Based Image Retrieval based on Color, Texture and Shape features using Image and its complement

@inproceedings{Hiremath2008ContentBI,
  title={Content Based Image Retrieval based on Color, Texture and Shape features using Image and its complement},
  author={Prakash S. Hiremath and Jagadeesh D. Pujari},
  year={2008}
}
Color, texture and shape information have been the primitive image descriptors in content based image retrieval systems. This paper presents a novel framework for combining all the three i.e. color, texture and shape information, and achieve higher retrieval efficiency using image and its complement. The image and its complement are partitioned into non-overlapping tiles of equal size. The features drawn from conditional co-occurrence histograms between the image tiles and corresponding… Expand

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