Publication | Closed Access
Joint estimation of object and aberrations by using phase diversity
484
Citations
17
References
1992
Year
Image ReconstructionEngineeringSensor ArrayPhase DiversityMulti-image FusionImage AnalysisPoisson Noise ModelsRadiologyHealth SciencesImage FormationMachine VisionReconstruction TechniqueMedical ImagingSynthetic Aperture RadarInverse ProblemsRange ImagingMedical Image ComputingSignal ProcessingPhase RetrievalComputer VisionRadarArray ProcessingPoisson NoisePoisson Noise CaseBiomedical ImagingGeometrical Aberration
The joint estimation of an object and the aberrations of an incoherent imaging system from multiple images incorporating phase diversity is investigated. Maximum-likelihood estimation is considered under additive Gaussian and Poisson noise models. Expressions for an aberration-only objective function that accommodates an arbitrary number of diversity images and its gradient are derived for the case of a Gaussian noise model. Expressions for the log-likelihood function and its gradient are presented for the case of Poisson noise. An expectation-maximization algorithm that enforces a nonnegativity constraint in a natural fashion is constructed for use in the Poisson noise case.
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