DocumentCode :
3704826
Title :
Single MLP-CFAR for a radar Doppler processor based on the ML criterion. Validation on real data
Author :
Nerea del-Rey-Maestre;David Mata-Moya;Pilar Jarabo-Amores;Pedro Gomez-del-Hoyo;Jaime Martin-de-Nicolas
Author_Institution :
Signal Theory and Communications Department, Superior Polytechnic School, University of Alcala, 28805 Alcala de Henares, Madrid, Spain
fYear :
2015
Firstpage :
53
Lastpage :
56
Abstract :
This paper tackles the evaluation of radar detectors with real data in a scenario composed by targets with unknown Doppler shift and sea clutter. A Neural Network-based Constant False Alarm Rate (CFAR) technique, NN-CFAR, is compared with reference detection schemes based on Doppler processors and conventional CFAR detectors. In these reference solutions, although CFAR techniques are designed for a desired false alarm rate, PFA, we prove that the final PFA rate is higher than the desired one. In this paper, a detection performance improvement is obtained with a detector that is a better approximation to the Neyman-Pearson detector based on the generalized Likelihood Ratio (selecting the maximum filter bank output), and uses a unique CFAR detector. Due to the non-linear nature of the maximum function, conventional CFAR detectors are not suitable. The improved detector is designed and applied to real data acquired by a coherent and pulsed radar system at X-band frequencies. Results prove that the NN-CFAR provides a higher probability of detection while fulfilling the PFA requirement.
Keywords :
"Detectors","Clutter","Doppler radar","Radar detection","Doppler effect","Artificial neural networks"
Publisher :
ieee
Conference_Titel :
Radar Conference (EuRAD), 2015 European
Type :
conf
DOI :
10.1109/EuRAD.2015.7346235
Filename :
7346235
Link To Document :
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