Research Article

Rough Texton based Fundus Image Retrieval

by  Krishnaveni Sadarajupalli, Sudhakar Putheti
journal cover
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 132 - Issue 15
Published: December 2015
Authors: Krishnaveni Sadarajupalli, Sudhakar Putheti
10.5120/ijca2015907663
PDF

Krishnaveni Sadarajupalli, Sudhakar Putheti . Rough Texton based Fundus Image Retrieval. International Journal of Computer Applications. 132, 15 (December 2015), 19-25. DOI=10.5120/ijca2015907663

                        @article{ 10.5120/ijca2015907663,
                        author  = { Krishnaveni Sadarajupalli,Sudhakar Putheti },
                        title   = { Rough Texton based Fundus Image Retrieval },
                        journal = { International Journal of Computer Applications },
                        year    = { 2015 },
                        volume  = { 132 },
                        number  = { 15 },
                        pages   = { 19-25 },
                        doi     = { 10.5120/ijca2015907663 },
                        publisher = { Foundation of Computer Science (FCS), NY, USA }
                        }
                        %0 Journal Article
                        %D 2015
                        %A Krishnaveni Sadarajupalli
                        %A Sudhakar Putheti
                        %T Rough Texton based Fundus Image Retrieval%T 
                        %J International Journal of Computer Applications
                        %V 132
                        %N 15
                        %P 19-25
                        %R 10.5120/ijca2015907663
                        %I Foundation of Computer Science (FCS), NY, USA
Abstract

Content based image retrieval (CBIR), is a robust technique widely used in the field of image retrieval. This method uses visual contents like color, texture and shape, to search images from a large scale database of images. Among the primary image contents, texture is an important spatial feature. Texton is a statistical approach used to analyze the texture of an image. Texture-based approach proposed here can take into account the vagueness of images also while retrieving images just as an expert manually retrieves medical images.

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Index Terms
Computer Science
Information Sciences
No index terms available.
Keywords

Content Based Medical Image Retrieval Rough sets Texture analysis Texton Rough Set Support Vector Machines HSV.

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