A Study of Content Based Image Retrieval Using En- Hanced Radon Transform Space Features Set by Pcs and Lda Techniques Studija Dohvata Slika Pomoću Pojačane Transfor- Macije Radona I Pcs I Lda Tehnika

نویسندگان

  • Singaravelan Shanmugasundaram
  • Murugan Dhanushkodi
چکیده

Image Retrieval is very one of the biggest task in the recent years. It is widely used in many real time databases to retrieve related images in various fields like medicine, military, online shopping etc. This paper offers with using radon transform followed by PCA and LDA techniques for image retrieval is called as Combined Radon Space Features Set (CRSFS). Caltech 101 database image sets used in this paper. The correct direction is select means the computation time and complexity of operation is less to achieve good retrieval rate. Sažetak Obrada slika je jedan od najvećih zadataka u posljednjih nekoliko godina. Naširoko se koristi u mnogim bazama podataka kad se u realnom vremenu koriste povezane slike u različitim područjima kao što su medicina, vojska, online trgovina, itd. Ovaj rad nudi pomoć radon pretvorbe i zatim PCA i LDA tehnika za popravljanje slike (CRSFS). Korištena je Caltech 101 baza slika. Ispravan smjer je odabrati način računanja vremena i složenosti rada da bi se postigla manja cijena preuzimanja.

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تاریخ انتشار 2014