DocumentCode
1234705
Title
Cellular neural networks with output function having multiple constant regions
Author
Yokosawa, Ken´ichi ; Nakaguchi, Toshiya ; Tanji, Yuichi ; Tanaka, Mamoru
Author_Institution
Tokyo Electr. Power Co. Inc., Saitama, Japan
Volume
50
Issue
7
fYear
2003
fDate
7/1/2003 12:00:00 AM
Firstpage
847
Lastpage
857
Abstract
This paper presents a novel class of cellular neural networks (CNNs), where output of a cell in the CNN is given by the piecewise-linear (PWL) function having multiple constant regions or a quantization function. CNNs with one of these output functions allow us to extend CNNs to image processing with multiple gray levels. Since each cell of the original CNN has the PWL output function with two saturation regions, the image-processing tasks are mainly developed for black and white output images. Hence, the proposed architecture will extend the promising nature of the CNN further. Moreover, the hysteresis characteristics are introduced for these functions, which make tolerance to a noise robust. It is demonstrated mathematically that under a mild assumption, the stability of the CNN, which has an output function with hysteresis characteristics, is guaranteed, and the impressive simulation results are also presented.
Keywords
cellular neural nets; hysteresis; image processing; piecewise linear techniques; quantisation (signal); stability; CNN stability; PWL output function; cellular neural networks; hysteresis characteristics; image processing; multiple constant regions; multiple gray levels; piecewise-linear function; quantization function; saturation regions; Associate members; Cellular neural networks; Hysteresis; Image converters; Image processing; Noise robustness; Piecewise linear techniques; Quantization; Reliability engineering; Stability;
fLanguage
English
Journal_Title
Circuits and Systems I: Fundamental Theory and Applications, IEEE Transactions on
Publisher
ieee
ISSN
1057-7122
Type
jour
DOI
10.1109/TCSI.2003.813979
Filename
1211084
Link To Document