Title :
Irregular Tree-Structured Bayesian Network for image segmentation
Author :
Kampa, Kittipat ; Putthividhya, Duangmanee ; Principe, Jose C.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Florida, Gainesville, FL, USA
Abstract :
Unsupervised image segmentation algorithms rely heavily on a probabilistic smoothing prior to enforce local homogeneity in the segmentation results. The tree-structured prior [1, 2, 3] is one such prior which allows important multi-scale spatial correlations that exist in natural images to be captured. Two main types of tree structure prior have been previously proposed: 1) fixed quadtree structure [1], which suffers from “blockiness” in the segmentation results and 2) flexible tree structure [2, 3] which can adapt its structure to the natural object boundary but at a significant computational cost. This paper presents a novel probabilistic unsupervised image segmentation framework called Irregular Tree-Structured Bayesian Networks (ITSBN) which introduces the notion of irregular tree structure that combines the merits of the two previous approaches. As in [2, 3], more natural object boundaries can be modeled in our framework since a tree is learned for each input image. Our method, however, does not update the adaptive structure at every iteration which drastically reduces the computation required. We derive a time-efficient exact inference algorithm based on a sum-product framework using factor graphs [4]. Furthermore, a novel methodology for the evaluation of unsupervised image segmentation is proposed. By integrating non-parametric density estimation techniques with the traditional precision-recall framework, the proposed method is more robust to boundary inconsistency due to human subjects.
Keywords :
graph theory; image segmentation; natural scenes; nonparametric statistics; probability; quadtrees; smoothing methods; unsupervised learning; ITSBN; adaptive structure; boundary inconsistency; factor graphs; fixed quadtree structure; flexible tree structure; irregular tree structure; irregular tree-structured Bayesian networks; multiscale spatial correlations; natural images; natural object boundary; nonparametric density estimation techniques; precision-recall framework; probabilistic smoothing; probabilistic unsupervised image segmentation framework; sum-product framework; time-efficient exact inference algorithm; tree structure prior; tree-structured prior; unsupervised image segmentation algorithms; Adaptation models; Bayesian methods; Computational modeling; Graphical models; Image color analysis; Image segmentation; Inference algorithms; Bayesian networks; Unsupervised image segmentation; graphical models; precision-recall framework; tree structure;
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2011 IEEE International Workshop on
Conference_Location :
Santander
Print_ISBN :
978-1-4577-1621-8
Electronic_ISBN :
1551-2541
DOI :
10.1109/MLSP.2011.6064604