FIELD: radio engineering, communication.
SUBSTANCE: spacecraft recognition method for reduced radar images is to obtain radar images of the spacecraft. The resulting radar image is reduced by extracting the contour of the spacecraft to image and initialization circuit value of the measured radar cross-section unit and input to the pre-trained reduced in the same way the reference radar images of known classes of spacecraft three-layer perceptron, with the result that the output of three-layer perceptron excited neuron corresponding number of class spacecraft, which attributed the observed unit.
EFFECT: reducing the number of calculations at the stage of making a decision about a class of spacecraft and increase the probability of correct classification of the spacecraft in a highly noisy images after the reduction procedure.
2 dwg
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Authors
Dates
2017-05-29—Published
2015-06-08—Filed