Title :
Thresholding-based segmentation revisited using mixtures of generalized Gaussian distributions
Author :
Boulmerka, A. ; Allili, Mohand Said
Author_Institution :
Ecole Nat. Super. d´´Inf., Algiers, Algeria
Abstract :
This paper presents a new approach to image-thresholding-based segmentation. It considerably improves existing methods by efficiently modeling non-Gaussian and multi-modal class-conditional distributions. The proposed approach seamlessly: 1) extends the Otsu´s method to arbitrary numbers of thresholds and 2) extends the Kittler and Illingworth minimum error thresholding to non-Gaussian and multi-modal class-conditional data. We use the recently-proposed mixture of generalized Gaussian distributions (MoGG) modeling, which enables to efficiently represent heavy-tailed data, as well as multi-modal histograms with flat and sharply-shaped peaks. Experiments performed on synthetic data and real-world image segmentation show the performance of the proposed approach with comparison to recent state-of-the-art techniques.
Keywords :
Gaussian distribution; image segmentation; Kittler and Illingworth minimum error thresholding; MoGG modeling; Otsu method; image thresholding-based segmentation; mixture of generalized Gaussian distribution; multimodal class conditional distribution; multimodal histogram; nonGaussian distribution modeling; Biomedical imaging; Dispersion; Gaussian distribution; Histograms; Image segmentation; Laplace equations; Pattern recognition;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4