DocumentCode :
980574
Title :
An analog neural network implementation in fixed time of adjustable-order statistic filters and applications
Author :
Mestari, Mohammed
Author_Institution :
ENSET Mohammedia, Morocco
Volume :
15
Issue :
3
fYear :
2004
fDate :
5/1/2004 12:00:00 AM
Firstpage :
766
Lastpage :
785
Abstract :
In this paper, we show a neural network implementation in fixed time of adjustable order statistic filters, including sorting, and adaptive-order statistic filters. All these networks accept an array of N numbers Xi=SXiMXi2EXi as input (where SXi is the sign of Xi, MXi is the mantissa normalized to m digits, and Ex is the exponent) and employ two kinds of neurons, the linear and the threshold-logic neurons, with only integer weights (most of the weights being just +1 or -1) and integer threshold. Therefore, this will greatly facilitate the actual hardware implementation of the proposed neural networks using currently available very large scale integration technology. An application of using minimum filter in implementing a special neural network model neural network classifier (NNC) is given. With a classification problem of l classes C1,C2,...,C1, NNC classifies in fixed time an unknown vector to one class using a minimum-distance classification technique.
Keywords :
VLSI; filters; neural nets; sorting; actual hardware implementation; adaptive-order statistic filters; adjustable-order statistic filters; analog neural network implementation; integer threshold; minimum filter; minimum-distance classification technique; neural network classifier; sorting filters; threshold-logic neurons; very large scale integration technology; Adaptive filters; Application software; Filtering; Hardware; Intelligent networks; Neural networks; Neurons; Sorting; Statistics; Very large scale integration; Computers, Analog; Neural Networks (Computer); Time Factors;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2003.820656
Filename :
1296702
Link To Document :
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