DocumentCode :
1268656
Title :
Combining belief networks and neural networks for scene segmentation
Author :
Feng, Xiaojuan ; Williams, Christopher K I ; Felderhof, Stephen N.
Author_Institution :
Informatics Lab., Nat. Inst. for Biol. Stand. & Control, Potters Bar, UK
Volume :
24
Issue :
4
fYear :
2002
fDate :
4/1/2002 12:00:00 AM
Firstpage :
467
Lastpage :
483
Abstract :
We are concerned with the problem of image segmentation, in which each pixel is assigned to one of a predefined finite number of labels. In Bayesian image analysis, this requires fusing together local predictions for the class labels with a prior model of label images. Following the work of Bouman and Shapiro (1994), we consider the use of tree-structured belief networks (TSBNs) as prior models. The parameters in the TSBN are trained using a maximum-likelihood objective function with the EM algorithm and the resulting model is evaluated by calculating how efficiently it codes label images. A number of authors have used Gaussian mixture models to connect the label field to the image data. We compare this approach to the scaled-likelihood method of Smyth (1994) and Morgan and Bourlard (1995), where local predictions of pixel classification from neural networks are fused with the TSBN prior. Our results show a higher performance is obtained with the neural networks. We evaluate the classification results obtained and emphasize not only the maximum a posteriori segmentation, but also the uncertainty, as evidenced e.g., by the pixelwise posterior marginal entropies. We also investigate the use of conditional maximum-likelihood training for the TSBN and find that this gives rise to improved classification performance over the ML-trained TSBN
Keywords :
belief networks; feature extraction; image coding; image segmentation; learning (artificial intelligence); maximum likelihood estimation; multilayer perceptrons; probability; Bayesian image analysis; EM algorithm; Gaussian mixture model; class labels; classification performance; conditional maximum-likelihood training; expectation-maximization; image segmentation; label images; local predictions; maximum a posteriori segmentation; maximum-likelihood objective function; neural networks; pixel classification; pixelwise posterior marginal entropies; scaled-likelihood method; scene segmentation; tree-structured belief networks; uncertainty; Layout; Neural networks;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/34.993555
Filename :
993555
Link To Document :
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