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Deep learning is emerging as a powerful technique in many areas of sciences, from evolutionary biology to quantum physics.
They may use artificial neural networks (ANNs) to automatically learn to identify and extract the relevant features present in an input dataset. In this paper we will describe the use of such approaches in a number of applications. We show how to recover high-resolution images from sub-sampled information in Airy beam light sheet microscopy as well as analyse and understand measurement using laser speckle. Due consideration will be given to the role of noise in datasets, limitations of these approaches and future directions
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Phillip Wijesinghe, Kishan Dholakia, "Deep learning for microscopy and measurement," Proc. SPIE 11463, Optical Trapping and Optical Micromanipulation XVII, 114631I (22 August 2020); https://doi.org/10.1117/12.2571320