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Nonparametric missing sample spectral analysis and its applications to interrupted SAR
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2011
Year
EngineeringSpectrum EstimationFast Fourier TransformData ScienceSignal ReconstructionImaging RadarRadar Signal ProcessingStatisticsRadiologyHealth SciencesSample Spectral AnalysisConjugate GradientMedical ImagingSynthetic Aperture RadarInverse ProblemsRadar ApplicationMedical Image ComputingSignal ProcessingRadarSparse RepresentationCompressive SensingBiomedical ImagingRadar Image Processing
We consider nonparametric adaptive spectral analysis of complex-valued data sequences with missing samples occurring in arbitrary patterns. We first present two high-resolution missing-data spectral estimation algorithms: the Iterative Adaptive Approach (IAA) and the Sparse Learning via Iterative Minimization (SLIM) method. Both algorithms can significantly improve the spectral estimation performance, including enhanced resolution and reduced sidelobe levels. Moreover, we consider fast implementations of these algorithms using the Conjugate Gradient (CG) technique and the Gohberg-Semencul-type (GS) formula. Our proposed implementations fully exploit the structure of the steering matrices and maximize the usage of the Fast Fourier Transform (FFT), resulting in much lower computational complexities as well as much reduced memory requirements. The effectiveness of the adaptive spectral estimation algorithms is demonstrated via several 2-D interrupted synthetic aperture radar (SAR) imaging examples.