4.5 Article

Bayesian neural-networks-based evaluation of binary speckle data

Journal

APPLIED OPTICS
Volume 43, Issue 28, Pages 5356-5363

Publisher

OPTICAL SOC AMER
DOI: 10.1364/AO.43.005356

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We present a new method using Bayesian probability theory and neural networks for the evaluation of speckle interference patterns for an automated analysis of deformation and erosion measurements. The method is applied to the fringe pattern reconstruction of speckle measurements with a Twyman-Green interferometer. Given a binary speckle image, the method returns the fringe pattern without noise, thus removing the need for smoothing and allowing a straightforward unwrapping procedure and determination of the surface shape. Because no parameters have to be adjusted, the method is especially suited for continuous and automated monitoring of surface changes. (C) 2004 Optical Society of America.

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