Publication | Closed Access
Adaptive Radar Detection in Gaussian Disturbance With Structured Covariance Matrix via Invariance Theory
32
Citations
42
References
2019
Year
RadarAdaptive FilterEngineeringAutomatic Target RecognitionSynthetic Aperture RadarRadar Image ProcessingInverse ProblemsInvariance TheoryGaussian DisturbanceRadar Signal ProcessingRadar ApplicationSignal DetectionSignal ProcessingAdaptive Radar DetectionCfar Versions
This paper deals with adaptive radar detection of targets in the presence of Gaussian disturbance sharing a block-diagonal covariance structure. The problem is formulated according to a very general signal model, which contains the point-like, range-spread, and subspace target (or targets) as special instances. Hence, a unified study on the resulting adaptive detection problem is handled with the use of the invariance theory. The obtained results, including an appropriate transformation group, a maximal invariant and an induced maximal invariant, are proven consistent with those existing in the literature for some simple scenarios. Meanwhile, since the widely-used generalized likelihood ratio detector does not admit a closed form expression, new invariant detectors and their CFAR versions are proposed in this general scenario. Finally, their detection performance is assessed and validated via numerical examples.
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