Title :
Multi-feature fusion using neural networks for underwater acoustic signal processing
Author :
Krieger, Avi ; Brotherton, Tom ; Mears, Eric
Author_Institution :
ORINCON Corp., San Diego, CA, USA
Abstract :
Two neural net (NN) architectures (single NN and multilayer NN), each performing feature fusion for detection and classification of underwater transient signals, are compared. The impact of the different architectures on the training policies is considered; the results of various training schemes are presented, and an attempt is made to obtain an optimal training policy for each of the competing architectures. It is seen that in some cases a neural net using a single input feature can perform well. However, the results obtained indicate that the fused network is the most robust with respect to different levels of signal with additive noise and across the classes considered
Keywords :
acoustic signal processing; neural nets; signal detection; underwater sound; additive noise; feature fusion; fused network; multi-layer neural network; neural net architectures; optimal training policy; signal classification; signal detection; signal levels; single input feature; single neural network; training; underwater acoustic signal processing; underwater transient signals; Acoustic signal detection; Acoustic signal processing; Biomedical signal processing; Event detection; Information filtering; Information filters; Neural networks; Sonar detection; Underwater acoustics; Underwater tracking;
Conference_Titel :
Signals, Systems and Computers, 1991. 1991 Conference Record of the Twenty-Fifth Asilomar Conference on
Conference_Location :
Pacific Grove, CA
Print_ISBN :
0-8186-2470-1
DOI :
10.1109/ACSSC.1991.186621