Title :
A comparison of second-order neural networks to transform-based method for translation- and orientation-invariant object recognition
Author :
Duren, Russ ; Peikari, Behrouz
Author_Institution :
General Dynamics Corp., Fort Worth, TX, USA
fDate :
30 Sep-1 Oct 1991
Abstract :
Neural networks can use second-order neurons to obtain invariance to translations in the input pattern. Alternatively transform methods can be used to obtain translation invariance before classification by a neural network. The authors compare the use of second-order neurons to various translation-invariant transforms. The mapping properties of second-order neurons are compared to those of the general class of fast translation-invariant transforms introduced by Wagh and Kanetkar (1977) and to the power spectra of the Walsh-Hadamard and discrete Fourier transforms. A fast transformation based on the use of higher-order correlations is introduced. Three theorems are proven concerning the ability of various methods to discriminate between similar patterns. Second-order neurons are shown to have several advantages over the transform methods. Experimental results are presented that corroborate the theory
Keywords :
Walsh functions; fast Fourier transforms; neural nets; optical character recognition; Walsh-Hadamard transform; discrete Fourier transforms; higher-order correlations; mapping properties; neural networks; pattern recognition; power spectra; second-order neurons; transform methods; Discrete Fourier transforms; Discrete transforms; Fast Fourier transforms; Feature extraction; Neural networks; Neurons; Object recognition; Pattern recognition; Postal services; Sampling methods;
Conference_Titel :
Neural Networks for Signal Processing [1991]., Proceedings of the 1991 IEEE Workshop
Conference_Location :
Princeton, NJ
Print_ISBN :
0-7803-0118-8
DOI :
10.1109/NNSP.1991.239518