Title
Progressive Tree-like Curvilinear Structure Reconstruction with Structured Ranking Learning and Graph Algorithm.
Abstract
We propose a novel tree-like curvilinear structure reconstruction algorithm based on supervised learning and graph theory. In this work we analyze image patches to obtain the local major orientations and the rankings that correspond to the curvilinear structure. To extract local curvi-linear features, we compute oriented gradient information using steerable filters. We then employ Structured Support Vector Machine for ordinal regression of the input image patches, where the ordering is determined by shape similarity to latent curvilinear structure. Finally, we progressively reconstruct the curvilinear structure by looking for geodesic paths connecting remote vertices in the graph built on the structured output rankings. Experimental results show that the proposed algorithm faithfully provides topological features of the curvilinear structures using minimal pixels for various datasets.
Year
Venue
Field
2016
arXiv: Computer Vision and Pattern Recognition
Structured support vector machine,Graph theory,Ranking,Pattern recognition,Computer science,Supervised learning,Reconstruction algorithm,Ordinal regression,Artificial intelligence,Curvilinear coordinates,Geodesic,Machine learning
DocType
Volume
Citations 
Journal
abs/1612.02631
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Seong-Gyun Jeong111.03
Yuliya Tarabalka290747.12
Nicolas Nisse331332.82
Josiane Zerubia42032232.91