Title :
Supervised Image Segmentation Based on Tree-Structured MRF Model in Wavelet Domain
Author :
Liu, Guoying ; Qin, Qianqing ; Mei, Tiancan ; Xie, Wei ; Wang, Leiguang
Author_Institution :
State Key Lab. for Inf. Eng. in Surveying, Wuhan Univ., Wuhan, China
Abstract :
In the tree-structured Markov random field (TS-MRF) model, a sequence of MRFs was hierarchically defined on the single spatial resolution in the format of a tree structure which might suffer from the deficiency of modeling the nonstationary property of a given image. In order to overcome such a problem and motivated by nonredundant directional selectivity and highly discriminative nature of the wavelet representation, we attempt to introduce the TS-MRF model into the wavelet domain and propose a new image modeling method-WTS-MRF, in which each MRF is defined over a multiresolution subset of the lattice sites corresponding to the wavelet decomposition. Based on WTS-MRF, a supervised image segmentation algorithm is carried out, and experiment on a remotely sensed image proves the better performance than the supervised segmentation algorithm based on the TS-MRF model.
Keywords :
geophysics computing; image segmentation; remote sensing; tree data structures; wavelet transforms; Tree-Structured MRF Model; image modeling method; remote sensing image; spatial resolution; supervised image segmentation algorithm; tree-structured Markov random field; wavelet decomposition; wavelet domain; wavelet representation; Image segmentation; TS-MRF model in wavelet domain (WTS-MRF); tree-structured Markov random field (TS-MRF); wavelet transformation;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2009.2026719