DocumentCode
3437852
Title
Model-based Edge Tracking for Segmentation of Low Contrast Images
Author
Hudy, Christopher ; Campbell, Jonathan ; Slater, John
Author_Institution
Letterkenny Inst. of Technol., Letterkenny
fYear
2007
fDate
5-7 Sept. 2007
Firstpage
212
Lastpage
212
Abstract
Segmentation is a significant preliminary step for many image-based object recognition activities. Microscopy images often present segmentation problems, namely low contrast (the objects are translucent) and occlusions. Fortunately, translucency provides some possibility of solving the occlusion problem; edge-based methods can be used to tackle the low contrast (translucency) problem, but the edges are noisy and edge tracking must be used. In occluded regions edges can be very faint and noise and conflicting edges can confuse even edge tracking: an edge contour containing gaps may result. This poster presents work on a gap filling algorithm that uses model-based prediction to augment noisy edge data.
Keywords
edge detection; hidden feature removal; image segmentation; microscopy; object detection; object recognition; tracking; gap filling algorithm; image-based object recognition; low contrast image segmentation; microscopy images; model-based edge tracking; occluded edge region; Computer vision; Curve fitting; Filling; Image processing; Image segmentation; Machine vision; Microscopy; Object recognition; Prediction algorithms; Predictive models;
fLanguage
English
Publisher
ieee
Conference_Titel
Machine Vision and Image Processing Conference, 2007. IMVIP 2007. International
Conference_Location
Kildare
Print_ISBN
978-0-7695-2887-8
Type
conf
DOI
10.1109/IMVIP.2007.10
Filename
4318166
Link To Document