Title
Topology-Preserving Image Segmentation by Beltrami Representation of Shapes.
Abstract
A new approach using the Beltrami representation of a shape for topology-preserving image segmentation is proposed in this paper. Using the proposed model, the target object can be segmented from the input image by a region of user-prescribed topology. Given a target image , a template image is constructed and then deformed with respect to the Beltrami representation. The deformation on is designed such that the topology of the segmented region is preserved as which the object is interior in . The topology-preserving property of the deformation is guaranteed by imposing only one constraint on the Beltrami representation, which is easy to be handled. Introducing the Beltrami representation also allows large deformations on the topological prior , so that it can be a very simple image, such as an image of disks, torus, disjoint disks. Hence, prior shape information of is unnecessary for the proposed model. Additionally, the proposed model can be easily incorporated with selective segmentation, in which landmark constraints can be imposed interactively to meet any practical need (e.g., medical imaging). High accuracy and stability of the proposed model to deal with different segmentation tasks are validated by numerical experiments on both artificial and real images.
Year
DOI
Venue
2018
https://doi.org/10.1007/s10851-017-0767-8
Journal of Mathematical Imaging and Vision
Keywords
Field
DocType
Image segmentation,Topology preserving,Quasi-conformal geometry,Beltrami signature,Template deformation,Prior image
Computer vision,Topology,Scale-space segmentation,Disjoint sets,Segmentation,Segmentation-based object categorization,Image segmentation,Torus,Artificial intelligence,Real image,Landmark,Mathematics
Journal
Volume
Issue
ISSN
60
3
0924-9907
Citations 
PageRank 
References 
0
0.34
23
Authors
4
Name
Order
Citations
PageRank
Hei Long Chan131.76
Shi Yan212719.94
Lok Ming Lui333230.16
Xue-Cheng Tai42090131.53