Title :
Adaptive clustering neural net for piecewise nonlinear discriminant surfaces
Author :
Casasent, David ; Barnard, Etienne
Abstract :
A three-layer adaptive clustering neural net is described for distortion-invariant multiclass object recognition in difficult problems requiring piecewise nonlinear discriminant surfaces. The number of hidden-layer neurons is determined by an organized procedure (several neurons are used per class as prototypes of each class). These are chosen by clustering techniques. The vector description of each prototype in the multidimensional input feature space specifies a set of linear discriminant functions that are the initial input to the hidden-layer weights used. These weights are then refined by a neural net algorithm using conjugate gradient techniques to produce the final weights. A neural net (NN) that marries pattern-recognition and NN techniques is thus obtained. Various multiclass distortion-invariant classification results are presented
Keywords :
conjugate gradient methods; neural nets; pattern recognition; picture processing; conjugate gradient techniques; distortion-invariant classification; distortion-invariant multiclass object recognition; hidden-layer neurons; hidden-layer weights; linear discriminant functions; multidimensional input feature space; neural net algorithm; pattern-recognition; piecewise nonlinear discriminant surfaces; three-layer adaptive clustering neural net; vector description;
Conference_Titel :
Neural Networks, 1990., 1990 IJCNN International Joint Conference on
Conference_Location :
San Diego, CA, USA
DOI :
10.1109/IJCNN.1990.137602