Title
Multigrid MRF Based Picture Segmentation with Cellular Neural Networks
Abstract
Due to the large computation power needed for Markovian Random Field (MRF) based image processing, new variations of basic MRF models are implemented. The Cellular Neural Network (CNN) architecture, implemented in real VLSI circuits, is of superior speed in image processing. This very fast CNN can implement the ideas of existing MRF models, which would result in real time processing of images. This VLSI solution gives new tasks since the CNN has a special local architecture. A type of MRF image segmentation with Modified Metropolis Dynamics (MMD) can be well implemented in the CNN architecture. In this paper, we address the improvement of the existing CNN method. We have tried out different multigrid models and compared segmentation results. The main reason for this research is to find the proper implementation of the CNN-MRF technique on CNNs according to the abilities of today''s and future''s VLSI CNN systems.
Year
DOI
Venue
1997
10.1007/3-540-63460-6_136
CAIP
Keywords
Field
DocType
cnn architecture,basic mrf model,existing cnn method,vlsi solution,picture segmentation,mrf image segmentation,cellular neural networks,real vlsi circuit,vlsi cnn system,fast cnn,multigrid mrf,image processing,mrf model,random field,real time processing,cellular neural network,image segmentation
Anisotropic diffusion,Computer vision,Pattern recognition,Segmentation,Computer science,Image processing,Image segmentation,Artificial intelligence,Artificial neural network,Very-large-scale integration,Cellular neural network,Multigrid method
Conference
ISBN
Citations 
PageRank 
3-540-63460-6
1
0.40
References 
Authors
5
3
Name
Order
Citations
PageRank
László Czuni16813.41
Tamás Szirányi215226.92
Josiane Zerubia32032232.91