Expert content-based image retrieval system using robust local patterns

@article{Murala2014ExpertCI,
  title={Expert content-based image retrieval system using robust local patterns},
  author={Subrahmanyam Murala and Qing Ming Jonathan Wu},
  journal={J. Vis. Commun. Image Represent.},
  year={2014},
  volume={25},
  pages={1324-1334}
}
  • Subrahmanyam Murala, Qing Ming Jonathan Wu
  • Published in
    J. Vis. Commun. Image…
    2014
  • Computer Science
  • A new image indexing and retrieval algorithm for content based image retrieval is proposed in this paper. The local region of the image is represented by making the use of local difference operator (LDO), separating it into two components i.e. sign and magnitude. The sign LBP operator (S_LBP) is a generalized LBP operator. The magnitude LBP (M_LBP) operator is calculated using the magnitude of LDO. A robust LBP (RLBP) operator is presented employing robust S_LBP and robust M_LBP. Further, the… CONTINUE READING

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