Title :
Texture classification by cellular neural network and genetic learning
Author :
SzirÁnyi, Tamás ; Csapodi, Márton
Author_Institution :
Comput. & Autom. Inst., Hungarian Acad. of Sci., Budapest, Hungary
Abstract :
A new one-chip texture-classifier system is demonstrated with an execution time of about a few μsecs. Cellular neural networks (CNN) provide a new fast parallel computational method for VLSI image processing. CNN contain one or more layers of 2D cell-arrays with local cell-interconnections and in-cell dynamics. In this paper it is demonstrated that many of the feature mapping early vision effects can be simultaneously executed as convolution/deconvolution, cross-correlation, pattern-shifting, halftoning etc. The parameters of the CNN (a template) are trained through a genetic-like learning algorithm. Several types of Brodatz textures have been examined to test our method for classification and segmentation. Choosing 4 Brodatz textures which are close to each other in their main characteristics, they can be discriminated at a classification error of about 1-5% and segmentation error of about 5-10 pixels by using only one CNN template, even in the case of noisy or nonuniform CNN VLSI parameters. Using a 44*44 CNN array and one template, 16 Brodatz textures can be successfully discriminated
Keywords :
cellular neural nets; 2D cell-arrays; Brodatz textures; VLSI image processing; cellular neural network; convolution; cross-correlation; early vision; feature mapping; genetic learning; parallel computational method; segmentation; texture classification; texture-classifier chip; Cellular neural networks; Computer networks; Concurrent computing; Convolution; Deconvolution; Genetics; Image processing; Simultaneous localization and mapping; Testing; Very large scale integration;
Conference_Titel :
Pattern Recognition, 1994. Vol. 3 - Conference C: Signal Processing, Proceedings of the 12th IAPR International Conference on
Conference_Location :
Jerusalem
Print_ISBN :
0-8186-6275-1
DOI :
10.1109/ICPR.1994.577209