Publication | Closed Access
Evaluation of uncertainty for regularized deconvolution: A case study in hydrophone measurements
36
Citations
19
References
2017
Year
EngineeringMeasurementSpectrum EstimationDynamic CalibrationDynamic MetrologyRegularized DeconvolutionAcoustic ModelingNoise ReductionOcean AcousticsUncertainty QuantificationCalibrationNoiseHydrophone MeasurementsAcoustical EngineeringAcoustic Signal ProcessingMeasurement UncertaintiesAcoustic AnalysisRadiologyHealth SciencesInverse ProblemsDeconvolutionUltrasoundSignal ProcessingCase StudySpeech Processing
An estimation of the measurand in dynamic metrology usually requires a deconvolution based on a dynamic calibration of the measuring system. Since deconvolution is, mathematically speaking, an ill-posed inverse problem, some kind of regularization is required to render the problem stable and obtain usable results. Many approaches to regularized deconvolution exist in the literature, but the corresponding evaluation of measurement uncertainties is, in general, an unsolved issue. In particular, the uncertainty contribution of the regularization itself is a topic of great importance, because it has a significant impact on the estimation result. Here, a versatile approach is proposed to express prior knowledge about the measurand based on a flexible, low-dimensional modeling of an upper bound on the magnitude spectrum of the measurand. This upper bound allows the derivation of an uncertainty associated with the regularization method in line with the guidelines in metrology. As a case study for the proposed method, hydrophone measurements in medical ultrasound with an acoustic working frequency of up to 7.5 MHz are considered, but the approach is applicable for all kinds of estimation methods in dynamic metrology, where regularization is required and which can be expressed as a multiplication in the frequency domain.
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