Regularized quadratic cost-function for integrating wave-front gradient fields.
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Abstract |
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From the Bayesian regularization theory we derive a quadratic cost-function for integrating wave-front gradient fields. In the proposed cost-function, the term of conditional distribution uses a central-differences model to make the estimated function well consistent with the observed gradient field. As will be shown, the results obtained with the central-differences model are superior to the results obtained with the backward-differences model, commonly used in other integration techniques. As a regularization term we use an isotropic first-order differences Markov Random-Field model, which acts as a low-pass filter reducing the errors caused by the noise. We present simulated and real experiments of the proposal applied in the Foucault test, obtaining good results. |
Year of Publication |
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2016
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Journal |
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Optics letters
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Volume |
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41
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Issue |
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10
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Number of Pages |
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2314-7
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Date Published |
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2016
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ISSN Number |
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0146-9592
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DOI |
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10.1364/OL.41.002314
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Short Title |
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Opt Lett
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