K-Nearest Neighbor Based Enhanced-CBIR System

  • Ramakishore* S
  • et al.
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Abstract

In content based image retrieval is the most widely recognized feature utilized are shape, hues, surface and so on. To improve the exactness of retrieval, it must look on the far side the old style features. The features which could without much of a stretch be extracted from information could be considered. One of such feature is directionality of the picture surface. Directional data can be spoken to in a minimized way by utilizing transform like wavelet, Gabor, Radon and so on. In this proposal, we address this issue of utilizing directional data to build exactness of enhanced-CBIR. Picture retrieval execution is assessed by utilizing Precession and Recall. These calculations are most appropriate for retrieval of textural pictures. Our proposed Enhanced-CBIR system which works combine with KNN algorithm, provides better quality of result compare than the existing CBIR framework.

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Ramakishore*, S., & Karpagavalli, Dr. P. (2020). K-Nearest Neighbor Based Enhanced-CBIR System. International Journal of Innovative Technology and Exploring Engineering, 9(4), 550–554. https://doi.org/10.35940/ijitee.b7711.029420

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