Title :
Multispectral image segmentation using the rough-set-initialized EM algorithm
Author :
Pal, Sankar K. ; Mitra, Pabitra
Author_Institution :
Machine Intelligence Unit, Indian Stat. Inst., Calcutta, India
fDate :
11/1/2002 12:00:00 AM
Abstract :
The problem of segmentation of multispectral satellite images is addressed. An integration of rough-set-theoretic knowledge extraction, the Expectation Maximization (EM) algorithm, and minimal spanning tree (MST) clustering is described. EM provides the statistical model of the data and handles the associated measurement and representation uncertainties. Rough-set theory helps in faster convergence and in avoiding the local minima problem, thereby enhancing the performance of EM. For rough-set-theoretic rule generation, each band is discretized using fuzzy-correlation-based gray-level thresholding. MST enables determination of nonconvex clusters. Since this is applied on Gaussians, determined by granules, rather than on the original data points, time required is very low. These features are demonstrated on two IRS-1A four-band images. Comparison with related methods is made in terms of computation time and a cluster quality measure.
Keywords :
image segmentation; remote sensing; rough set theory; Gaussians; IRS-1A four-band images; cluster quality; computation time; fuzzy-correlation-based gray-level thresholding; granular computing; granules; local minima problem; minimal spanning tree clustering; mixture modeling; multispectral satellite image segmentation; nonconvex clusters; rough knowledge encoding; rough-set-initialized expectation maximization algorithm; rough-set-theoretic knowledge extraction; rough-set-theoretic rule generation; statistical model; Clustering algorithms; Convergence; Data mining; Gaussian processes; Image segmentation; Measurement uncertainty; Multispectral imaging; Pixel; Satellites; Time measurement;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2002.803716