Publication | Closed Access
An Improved Auto-Calibration Algorithm Based on Sparse Bayesian Learning Framework
66
Citations
13
References
2013
Year
EngineeringMachine LearningMultiplicative Perturbation ProblemRobust PerformanceAtomic DecompositionBayesian InferenceStatistical Signal ProcessingData ScienceCalibrationPattern RecognitionUncertainty QuantificationCamera CalibrationSignal ReconstructionBiostatisticsImproved Auto-calibration AlgorithmPublic HealthApproximation TheoryStatisticsBayesian Hierarchical ModelingInverse ProblemsSignal ProcessingSensor CalibrationSparse RepresentationCompressive SensingStatistical InferenceMultivariate Calibration
This letter considers the multiplicative perturbation problem in compressive sensing, which has become an increasingly important issue on obtaining robust performance for practical applications. The problem is formulated in a probabilistic model and an auto-calibration sparse Bayesian learning algorithm is proposed. In this algorithm, signal and perturbation are iteratively estimated to achieve sparsity by leveraging a variational Bayesian expectation maximization technique. Results from numerical experiments have demonstrated that the proposed algorithm has achieved improvements on the accuracy of signal reconstruction.
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