Litcius/Paper detail

Distributed Target Detection in Compound-Gaussian Clutter Under Steering Vector Uncertainty

Zhenyu Xu, Weijian Liu, Xiaolong Chen, Huanyao Dai, Jun Liu, Hui Chen

2025IEEE Transactions on Aerospace and Electronic Systems7 citationsDOI

Abstract

For solving the detection challenge of distributed targets in compound-Gaussian clutter under steering vector uncertainty, we propose two efficient detectors based on the generalized likelihood ratio test (GLRT) and Wald test under the assumptions that the clutter texture is deterministic but unknown and the distributed target steering vector is confined to a specified subspace while its coordinates remain undetermined. In the parameter estimation phase, we use maximum likelihood estimation (MLE) to estimate target amplitude and texture, followed by target coordinate estimation via the projected gradient descent (PGD) method. In the detector design phase, we adopt a two-step strategy. First, we derive detectors under known clutter covariance matrix (CM). Subsequently, the CM is substituted with its approximate maximum likelihood (AML) estimate. Simulation and real-data experiments confirm that the developed detectors exhibit superior detection performance compared to existing methods, with the GLRT-based detector achieving better results than the Wald-based detector. Moreover, both detectors' detection performance improves with increased training data, reduced target distributed dimension and signal subspace dimension. In addition, the proposed detectors exhibit constant false alarm rate (CFAR) properties for texture and CM structure.

Topics & Concepts

ClutterConstant false alarm rateDetectorSubspace topologyCovariance matrixLikelihood-ratio testObject detectionAlgorithmComputer scienceSignal subspaceFalse alarmGradient descentDetection theoryEstimation theoryPattern recognition (psychology)Artificial intelligenceDimension (graph theory)CovarianceMathematicsEllipsoidComputer visionMatrix (chemical analysis)Radar trackerControl theory (sociology)Eigendecomposition of a matrixIndependence (probability theory)Constant (computer programming)Signal-to-noise ratio (imaging)Rotational invarianceTracking (education)AmplitudeSIGNAL (programming language)Target acquisitionInfrared Target Detection MethodologiesTarget Tracking and Data Fusion in Sensor NetworksAdvanced Measurement and Detection Methods
Distributed Target Detection in Compound-Gaussian Clutter Under Steering Vector Uncertainty | Litcius