Title of article :
Target discrimination in synthetic aperture radar using artificial neural networks
Author/Authors :
Principe، نويسنده , , J.C.، نويسنده , , Kim، نويسنده , , M.، نويسنده , , Fisher، نويسنده , , M.، نويسنده , , III، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1998
Abstract :
This paper addresses target discrimination in synthetic
aperture radar (SAR) imagery using linear and nonlinear
adaptive networks. Neural networks are extensively used for
pattern classification but here the goal is discrimination. We will
show that the two applications require different cost functions.
We start by analyzing with a pattern recognition perspective
the two-parameter constant false alarm rate (CFAR) detector
which is widely utilized as a target detector in SAR. Then we
generalize its principle to construct the quadratic gamma discriminator
(QGD), a nonparametrically trained classifier based
on local image intensity. The linear processing element of the
QGD is further extended with nonlinearities yielding a multilayer
perceptron (MLP) which we call the NL-QGD (nonlinear QGD).
MLP’s are normally trained based on the L2 norm. We
experimentally show that the L2 norm is not recommended to
train MLP’s for discriminating targets in SAR. Inspired by the
Neyman–Pearson criterion, we create a cost function based on a
mixed norm to weight the false alarms and the missed detections
differently. Mixed norms can easily be incorporated into the
backpropagation algorithm, and lead to better performance.
Several other norms (L8; cross-entropy) are applied to train the
NL-QGD and all outperformed the L2 norm when validated by
receiver operating characteristics (ROC) curves. The data sets
are constructed from TABILS 24 ISAR targets embedded in 7
km2 of SAR imagery (MIT/LL mission 90).
Keywords :
Gamma kernels , Synthetic aperture radar , mixed norm training , target discrimination. , Neuralnetworks
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING