Title :
Optoelectronic fractal scanning technique for wavelet transform and neural net pattern classifiers
Author :
Phuvan, Sonlinh ; Oh, Tae Kwan ; Caviris, Nick ; Li, Yao ; Szu, Harold
Author_Institution :
NAVSWC, Silver Spring, MD, USA
Abstract :
A 1D scan which follows Peano´s curve to a desired resolution is demonstrated to preserve the 2D proximity relationship and is furthermore shown to be efficient for wavelet transform (WT) processing and artificial neural network pattern recognition. This deterministic fractal sampling method can be implemented in real time using optoelectronic scanning. For example, 2D texture patterns are analyzed by using a 1D WT. Those WT coefficients can be fed into a standard backpropagating neural network for pattern recognition. To speed up training time, a top-down design which generalizes Hopfield´s energy landscape approach is given in terms of mini-max pattern classifiers
Keywords :
feedforward neural nets; fractals; optical neural nets; optoelectronic devices; pattern recognition; wavelet transforms; 2D proximity relationship; 2D texture patterns; backpropagating neural network; deterministic fractal sampling method; energy landscape; mini-max pattern classifiers; minimax pattern classifiers; neural net pattern classifiers; optoelectronic scanning; pattern recognition; wavelet transform; Artificial neural networks; Fractals; Image sampling; Neural networks; Optical computing; Sampling methods; Signal processing; Silver; Springs; Wavelet transforms;
Conference_Titel :
Neural Networks, 1992. IJCNN., International Joint Conference on
Conference_Location :
Baltimore, MD
Print_ISBN :
0-7803-0559-0
DOI :
10.1109/IJCNN.1992.287240