Authors:
Mayank Golhar
1
;
Yuji Iwahori
2
;
M. K. Bhuyan
1
;
Kenji Funahashi
3
and
Kunio Kasugai
4
Affiliations:
1
Indian Institute of Technology Guwahati, India
;
2
Chubu University, Japan
;
3
Nagoya Insutitute of Technology, Japan
;
4
Aichi Medical University, Japan
Keyword(s):
Endoscopy, Scene Classification, SVM, Blood Vessel, Frangi Vesselness.
Related
Ontology
Subjects/Areas/Topics:
Applications
;
Bioinformatics and Systems Biology
;
Computer Vision, Visualization and Computer Graphics
;
Image Understanding
;
Medical Imaging
;
Pattern Recognition
;
Software Engineering
Abstract:
This paper proposes a model for blood vessel detection in endoscopic images. A novel SVM-based scene classification of endoscopic images is used. This SVM-based model classifies images into four classes on the basis of dye content and blood vessel presence in the scene, using various colour, edge and texture based features. After classification, a vessel extraction method is proposed which is based on the Frangi vesselness approach. In original Frangi Vesselness results, it is observed that many non-blood vessel edges are inaccurately detected as blood vessels. So, two additions are proposed, background subtraction and a novel dissimilarity-detecting filtering procedure, which are able to discriminate between blood vessel and non-blood vessel edges by exploiting the symmetric nature property of blood vessels. It was found that the proposed approach gave better accuracy of blood vessel extraction when compared with the vanilla Frangi Vesselness approach and BCOSFIRE filter, another st
ate-of-art vessel delineation approach.
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