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Deep Learning Based Compressive Imaging Method for High Precision Adaptive Null Interferometric Testing of Aspheric and Freeform Mirrors

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Abstract

High precision adaptive null interferometric testing of aspheric and freeform mirrors using SLM is limited by pixel pitch. Deep learning based compressive imaging has been proposed. Wavefront accuracy similar to non adaptive CGH is obtained.

© 2020 The Author(s)

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