Title :
Learned classification of sonar targets using a massively parallel network
Author :
Gorman, R. Paul ; Sejnowski, Terrence J.
Author_Institution :
Allied-Signal Aerosp. Technol. Center, Columbia, MD, USA
fDate :
7/1/1988 12:00:00 AM
Abstract :
Massively parallel learning networks are applied to the classification of sonar returns from two undersea targets and the ability of networks to correctly classify both training and testing examples is studied. Networks with an intermediate layer of hidden processing units achieved a classification accuracy as high as 100% on a training set of 104 returns. These networks correctly classified a test set of 104 returns not contained in the training set with an accuracy of up to 90.4%. Networks without an intermediate layer of processing units achieved only 73.1% correct on the same test set. Performance improved and the variability due to the initial conditions for training decreased with the number of hidden units. The effect of training set design on test set performance was also examined. The performance of a three-layered network was better than trained human listeners and the network generalized better than a nearest-neighbor classifier
Keywords :
computerised pattern recognition; learning systems; neural nets; parallel machines; sonar; hidden processing units; intermediate layer; learned classification; learning networks; massively parallel network; nearest-neighbor classifier; sonar returns; sonar targets; test set performance; testing; three-layered network; training; training set design; undersea targets; Aerospace biophysics; Computer networks; Concurrent computing; Humans; Parallel processing; Pattern classification; Pattern recognition; Signal design; Sonar applications; Testing;
Journal_Title :
Acoustics, Speech and Signal Processing, IEEE Transactions on