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Quantitative amplification of weak images by nonlinear propagation

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Abstract

We demonstrate quantitative nonlinear recovery of images that have been hidden by the addition of partially coherent light. The method assumes a simple model for spatial nonlinearity that allows direct Laplacian inversion based on intensity transport.

© 2013 Optical Society of America

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