DocumentCode :
1460170
Title :
Multiscale Bayesian segmentation using a trainable context model
Author :
Cheng, Hui ; Bouman, Charles A.
Author_Institution :
Visual Inf. Syst, Sarnoff Corp., Princeton, NJ, USA
Volume :
10
Issue :
4
fYear :
2001
fDate :
4/1/2001 12:00:00 AM
Firstpage :
511
Lastpage :
525
Abstract :
Multiscale Bayesian approaches have attracted increasing attention for use in image segmentation. Generally, these methods tend to offer improved segmentation accuracy with reduced computational burden. Existing Bayesian segmentation methods use simple models of context designed to encourage large uniformly classified regions. Consequently, these context models have a limited ability to capture the complex contextual dependencies that are important in applications such as document segmentation. We propose a multiscale Bayesian segmentation algorithm which can effectively model complex aspects of both local and global contextual behavior. The model uses a Markov chain in scale to model the class labels that form the segmentation, but augments this Markov chain structure by incorporating tree based classifiers to model the transition probabilities between adjacent scales. The tree based classifier models complex transition rules with only a moderate number of parameters. One advantage to our segmentation algorithm is that it can be trained for specific segmentation applications by simply providing examples of images with their corresponding accurate segmentations. This makes the method flexible by allowing both the context and the image models to be adapted without modification of the basic algorithm. We illustrate the value of our approach with examples from document segmentation in which test, picture and background classes must be separated
Keywords :
Bayes methods; Markov processes; document image processing; image classification; image segmentation; probability; Markov chain; class labels; complex transition rules; document segmentation; global contextual behavior; image segmentation; local contextual behavior; multiscale Bayesian segmentation; multiscale Bayesian segmentation algorithm; trainable context model; transition probabilities; tree based classifiers; uniformly classified regions; Bayesian methods; Classification tree analysis; Context modeling; Graphics; Image coding; Image segmentation; Iterative algorithms; Parameter estimation; Rendering (computer graphics); Video compression;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/83.913586
Filename :
913586
Link To Document :
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