Segmentation of Multiple Salient Closed Contours from Real Images - Robotics Institute Carnegie Mellon University

Segmentation of Multiple Salient Closed Contours from Real Images

Shyjan Mahamud, Lance R. Williams, Karvel K. Thornber, and Kanglin Xu
Journal Article, IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 25, No. 4, pp. 433 - 444, April, 2003

Abstract

Using a saliency measure based on the global property of contour closure, we have developed a segmentation method which identifies smooth closed contours bounding objects of unknown shape in real images. The saliency measure incorporates the Gestalt principles of proximity and good continuity that previous methods have also exploited. Unlike previous methods, we incorporate contour closure by finding the eigenvector with the largest positive real eigenvalue of a transition matrix for a Markov process where edges from the image serve as states. Element (i, j) of the transition matrix is the conditional probability that a contour which contains edge j will also contain edge i. In this paper, we show how the saliency measure, defined for individual edges, can be used to derive a saliency relation, defined for pairs of edges, and further show that strongly-connected components of the graph representing the saliency relation correspond to smooth closed contours in the image. Finally, we report for the first time, results on large real images for which segmentation takes an average of about 10 seconds per object on a general-purpose workstation.

BibTeX

@article{Mahamud-2003-8633,
author = {Shyjan Mahamud and Lance R. Williams and Karvel K. Thornber and Kanglin Xu},
title = {Segmentation of Multiple Salient Closed Contours from Real Images},
journal = {IEEE Transactions on Pattern Analysis and Machine Intelligence},
year = {2003},
month = {April},
volume = {25},
number = {4},
pages = {433 - 444},
}