Title :
Neural network learning of low-probability events
Author :
Munro, D.J. ; Ersoy, O.K. ; Bell, M.R. ; Sadowsky, J.S.
Author_Institution :
Intel Corp., Hillsboro, OR, USA
fDate :
7/1/1996 12:00:00 AM
Abstract :
In the problem of stationary target identification (STI) via millimeter wave (MMW) seeker radars in heavy clutter environments, it is often necessary to use nonparametric identification procedures, as detailed parametric models of clutter and target returns are generally unavailable. Neural networks provide an attractive approach to perform nonparametric identification. However, when identifying low-probability events, the computational overhead associated with training a neural network can become excessive. This is because low-probability events must be adequately represented in the training sample. We present a modified backpropagation training algorithm based on a likelihood ratio weighting function (LRWF) to train the neural network using a much smaller training set than that required using the standard backpropagation algorithm This algorithm is closely related to the importance sampling technique used in digital communication systems to obtain probability of error estimates by using a much smaller number of simulation runs than what is required with standard Monte Carlo simulation. The modified backpropagation technique results in a significant reduction in computational overhead in training the network, resulting from a substantial reduction in the size of the training set required to achieve a given level of performance. We demonstrate the performance of the algorithm on simulated data for the STI problem in MMW radar.
Keywords :
Monte Carlo methods; backpropagation; computational complexity; digital simulation; identification; neural nets; object recognition; probability; radar clutter; radar target recognition; simulation; MMW radar; Monte Carlo simulation; clutter; computational overhead; digital communication; heavy clutter environment; importance sampling; likelihood ratio weighting function; low-probability events; millimeter wave seeker radars; missiles; modified backpropagation training algorithm; neural network; nonparametric identification; probability of error estimates; stationary target identification; target; training; Backpropagation algorithms; Communication standards; Computational modeling; Computer networks; Millimeter wave communication; Millimeter wave radar; Millimeter wave technology; Neural networks; Parametric statistics; Radar clutter;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on