DocumentCode
831287
Title
Classification of audio radar signals using radial basis function neural networks
Author
McConaghy, Trent ; Leung, Henry ; Bossé, Éloi ; Varadan, Vinay
Author_Institution
Analog Design Autom. Inc., Ottawa, Ont., Canada
Volume
52
Issue
6
fYear
2003
Firstpage
1771
Lastpage
1779
Abstract
Radial basis function (RBF) neural networks are used to classify real-life audio radar signals that are collected by a ground surveillance radar mounted on a tank. Currently, a human operator is required to operate the radar system to discern among signals bouncing off tanks, vehicles, planes, and so on. The objective of this project is to investigate the possibility of using a neural network to perform this target recognition task, with the aim of reducing the number of personnel required in a tank. Different signal classification methods in the neural net literature are considered. The first method employs a linear autoregressive (AR) model to extract linear features of the audio data, and then perform classification on these features, i.e, the AR coefficients. AR coefficient estimations based on least squares and higher order statistics are considered in this study. The second approach uses nonlinear predictors to model the audio data and then classifies the signals according to the prediction errors. The real-life audio radar data set used here was collected by an AN/PPS-15 ground surveillance radar and consists of 13 different target classes, which include men marching, a man walking, airplanes, a man crawling, and boats, etc. It is found that each classification method has some classes which are difficult to classify. Overall, the AR feature extraction approach is most effective and has a correct classification rate of 88% for the training data and 67% for data not used for training.
Keywords
audio signal processing; autoregressive processes; feature extraction; higher order statistics; least squares approximations; radar computing; radar signal processing; radar target recognition; radial basis function networks; signal classification; time series; audio radar signals classification; automatic classification; feature extraction; ground surveillance radar; higher order statistics; least squares; linear autoregressive model; linear features; nonlinear predictors; prediction errors; radial basis function neural networks; real-life audio radar data set; target recognition; time series classification; Feature extraction; Humans; Neural networks; Pattern classification; Personnel; Radar; Radial basis function networks; Surveillance; Target recognition; Vehicles;
fLanguage
English
Journal_Title
Instrumentation and Measurement, IEEE Transactions on
Publisher
ieee
ISSN
0018-9456
Type
jour
DOI
10.1109/TIM.2003.820450
Filename
1246548
Link To Document