DocumentCode
87814
Title
Performance analysis of mean level constant false alarm rate detectors with binary integration in Weibull background
Author
Baadeche, Mohamed ; Soltani, Faouzi
Author_Institution
Lab. Signaux et Syst. de Commun., Univ. Constantine 1, Constantine, Algeria
Volume
9
Issue
3
fYear
2015
fDate
3 2015
Firstpage
233
Lastpage
240
Abstract
In this study, the authors analyse the performance of some constant false alarm rate (CFAR) detectors namely: the cell averaging-CFAR (CA-CFAR), greatest of CFAR (GO-CFAR), the smallest of CFAR (SO-CFAR), the smallest of OS and CA-CFAR (SOSCA-CFAR) and the OS and CA-CFAR greatest of (OSCAGO-CFAR) detectors in homogeneous and non-homogeneous Weibull background with binary integration under the assumption of a known shape parameter. The non-homogeneity is modelled by the presence of interfering targets and the presence of a clutter edge in the reference window. The authors derive close-form expressions of the probability of false alarm in the case of a homogeneous clutter environment. For a non-homogeneous environment, the performance of these detectors is investigated by means of Monte Carlo simulations. The obtained results showed that the best false alarm rate performance at clutter boundary is obtained for the OSCAGO and GO-CFAR detectors, whereas the SOSCA and SO-CFAR detectors present better performance for the interfering targets situation.
Keywords
Monte Carlo methods; Weibull distribution; clutter; signal detection; Monte Carlo simulations; OS and CA-CFAR greatest of; OSCAGO-CFAR detectors; SO-CFAR; SOSCA-CFAR; binary integration; cell averaging-CFAR; clutter boundary; clutter edge; false alarm rate performance; greatest of CFAR; mean level constant false alarm rate detectors; nonhomogeneous Weibull background; performance analysis; reference window; smallest of CFAR; smallest of order statistics;
fLanguage
English
Journal_Title
Radar, Sonar & Navigation, IET
Publisher
iet
ISSN
1751-8784
Type
jour
DOI
10.1049/iet-rsn.2014.0053
Filename
7054595
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