The paper presents the application of neural network to the classification of the closed contours forming different shapes. The shape is represented by ‐ samples of complex numbers zk = xk+ jyk where xk and yk are the samples in the x‐y plane and j is the complex operator. The same shapes may vary in scale, be rotated and translated in arbitrary proportion and be distorted by the noise. To obtain the classification invariant to all these factors the preprocessing techniques based on the application of Fourier transformation of the samples have been applied. The Fourier coefficients form the input data to the neural classifier. Different shapes have been checked in numerical experiments and the results have proved good performance of the developed neural classifier and its relative insensitivity to the noise.
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1 October 1998
Review Article|
October 01 1998
Shape recognition using FFT preprocessing and neural network Available to Purchase
Dinh Nghia Do;
Dinh Nghia Do
Institute of the Theory of Electrical Engineering and Electrical Measurements, Warsaw University of Technology, Warsaw, Poland
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Stanislaw Osowski
Stanislaw Osowski
Institute of the Theory of Electrical Engineering and Electrical Measurements, Warsaw University of Technology, Warsaw, Poland
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Publisher: Emerald Publishing
Online ISSN: 2054-5606
Print ISSN: 0332-1649
© MCB UP Limited
1998
COMPEL (1998) 17 (5): 658–666.
Citation
Nghia Do D, Osowski S (1998), "Shape recognition using FFT preprocessing and neural network". COMPEL, Vol. 17 No. 5 pp. 658–666, doi: https://doi.org/10.1108/03321649810221017
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