DocumentCode :
1513142
Title :
Optimum image thresholding via class uncertainty and region homogeneity
Author :
Saha, Punam K. ; Udupa, Jayaram K.
Author_Institution :
Dept. of Radiol., Pennsylvania Univ., Philadelphia, PA, USA
Volume :
23
Issue :
7
fYear :
2001
fDate :
7/1/2001 12:00:00 AM
Firstpage :
689
Lastpage :
706
Abstract :
Thresholding is a popular image segmentation method that converts a gray-level image into a binary image. The selection of optimum thresholds has remained a challenge over decades. Besides being a segmentation tool on its own, often it is also a step in many advanced image segmentation techniques in spaces other than the image space. We introduce a thresholding method that accounts for both intensity-based class uncertainty-a histogram-based property-and region homogeneity-an image morphology-based property. A scale-based formulation is used for region homogeneity computation. At any threshold, intensity-based class uncertainty is computed by fitting a Gaussian to the intensity distribution of each of the two regions segmented at that threshold. The theory of the optimum thresholding method is based on the postulate that objects manifest themselves with fuzzy boundaries in any digital image acquired by an imaging device. The main idea here is to select that threshold at which pixels with high class uncertainty accumulate mostly around object boundaries. To achieve this, a threshold energy criterion is formulated using class-uncertainty and region homogeneity such that, at any image location, a high energy is created when both class uncertainty and region homogeneity are high or both are low. Finally, the method selects that threshold which corresponds to the minimum overall energy. The method has been compared to a maximum segmented image information method. Superiority of the proposed method was observed both qualitatively on clinical medical images as well as quantitatively on 250 realistic phantom images generated by adding different degrees of blurring, noise, and background variation to real objects segmented from clinical images
Keywords :
Gaussian noise; entropy; image segmentation; mathematical morphology; medical image processing; probability; background variation; binary image; blurring; clinical medical images; fuzzy boundaries; gray-level image; histogram-based property; image morphology-based property; intensity-based class uncertainty; optimum image thresholding; region homogeneity; scale-based formulation; threshold energy criterion; Background noise; Biomedical imaging; Digital images; Distributed computing; Image converters; Image generation; Image segmentation; Imaging phantoms; Noise generators; Uncertainty;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/34.935844
Filename :
935844
Link To Document :
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