Publication | Open Access
Maximum-likelihood methods in wavefront sensing: stochastic models and likelihood functions
50
Citations
44
References
2007
Year
Wavefront SensingEngineeringSensor ArrayProbabilistic Wave ModellingStatistical Signal ProcessingImage AnalysisUncertainty QuantificationCalibrationSignal ReconstructionRadar Signal ProcessingSignal DetectionEstimation TheoryMachine VisionWavefront ParametersSensor DataSynthetic Aperture RadarAutomatic Target RecognitionInverse ProblemsSignal ProcessingComputer VisionRadarArray Processing
Maximum-likelihood (ML) estimation in wavefront sensing requires careful attention to all noise sources and all factors that influence the sensor data. We present detailed probability density functions for the output of the image detector in a wavefront sensor, conditional not only on wavefront parameters but also on various nuisance parameters. Practical ways of dealing with nuisance parameters are described, and final expressions for likelihoods and Fisher information matrices are derived. The theory is illustrated by discussing Shack-Hartmann sensors, and computational requirements are discussed. Simulation results show that ML estimation can significantly increase the dynamic range of a Shack-Hartmann sensor with four detectors and that it can reduce the residual wavefront error when compared with traditional methods.
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