DocumentCode
1012970
Title
Learning lateral interactions for feature binding and sensory segmentation from prototypic basis interactions
Author
Weng, Shijie ; Steil, Jochen Jakob ; Ritter, Helge
Author_Institution
Neuroinformatics Dept., Bielefeld Univ., Germany
Volume
17
Issue
4
fYear
2006
fDate
7/1/2006 12:00:00 AM
Firstpage
843
Lastpage
862
Abstract
We present a hybrid learning method bridging the fields of recurrent neural networks, unsupervised Hebbian learning, vector quantization, and supervised learning to implement a sophisticated image and feature segmentation architecture. This architecture is based on the competitive layer model (CLM), a dynamic feature binding model, which is applicable on a wide range of perceptual grouping and segmentation problems. A predefined target segmentation can be achieved as attractor states of this linear threshold recurrent network, if the lateral weights are chosen by Hebbian learning. The weight matrix is given by the correlation matrix of special pattern vectors with a structure dependent on the target labeling. Generalization is achieved by applying vector quantization on pair-wise feature relations, like proximity and similarity, defined by external knowledge. We show the successful application of the method to a number of artificial test examples and a medical image segmentation problem of fluorescence microscope cell images.
Keywords
Hebbian learning; image segmentation; matrix algebra; recurrent neural nets; unsupervised learning; vector quantisation; attractor states; competitive layer model; correlation matrix; dynamic feature binding model; feature segmentation architecture; fluorescence microscope cell images; hybrid learning method; lateral interaction learning; lateral weights; linear threshold recurrent network; medical image segmentation problem; pairwise feature relations; perceptual grouping; prototypic basis interactions; recurrent neural networks; sensory segmentation; sophisticated image segmentation architecture; special pattern vectors; supervised learning; target labeling; target segmentation; unsupervised Hebbian learning; vector quantization; weight matrix; Biomedical imaging; Hebbian theory; Image segmentation; Labeling; Learning systems; Medical tests; Prototypes; Recurrent neural networks; Supervised learning; Vector quantization; Feature binding; perceptual grouping; recurrent neural network; supervised and unsupervised learning;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2006.873295
Filename
1650242
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