Title :
Neural-network superresolution
Author :
Torrieri, Don ; Bakhru, Kesh
Author_Institution :
Army Res. Lab., Adelphi, MA, USA
Abstract :
The design options of superresolution using a neural network are discussed. Four specific neural-network architectures using different preprocessors are described, and their performances are compared. The correlation transformer is found to be the preprocessor that provides the best performance and the simplest implementation. The correlation transformer converts N complex inputs derived from a phased-array antenna into N(N+1)/2 complex outputs that are applied to the neural-network
Keywords :
antenna phased arrays; array signal processing; correlators; direction-of-arrival estimation; multilayer perceptrons; neural net architecture; signal resolution; transforms; complex inputs; complex outputs; correlation transformer; digital signal processors; direction finding; multilayer perceptron; neural-network architectures; neural-network superresolution; performance; phased-array antenna; preprocessors; Antenna arrays; Computer networks; Digital signal processors; Laboratories; Matrix converters; Multiple signal classification; Neural network hardware; Neural networks; Phased arrays; Signal resolution;
Conference_Titel :
MILCOM 97 Proceedings
Conference_Location :
Monterey, CA
Print_ISBN :
0-7803-4249-6
DOI :
10.1109/MILCOM.1997.645036