Emergent physics-informed design of deep learning for microscopy
Abstract
Deep learning has revolutionised microscopy, enabling automated means for image classification, tracking and transformation. Going beyond machine vision, deep learning has recently emerged as a universal and powerful tool to address challenging and previously untractable image recovery problems. In seeking accurate, learned means of inversion, these advances have transformed conventional deep learning methods to those cognisant of the underlying physics of image formation, enabling robust, efficient and accurate recovery even in severely ill-posed conditions. In this Perspective, we explore the emergence of physics-informed deep learning that will enable universal and accessible computational microscopy.
Citation
Wijesinghe , P & Dholakia , K 2021 , ' Emergent physics-informed design of deep learning for microscopy ' , Journal of Physics: Photonics , vol. 3 , no. 2 , 021003 . https://doi.org/10.1088/2515-7647/abf02c
Publication
Journal of Physics: Photonics
Status
Peer reviewed
ISSN
2515-7647Type
Journal item
Description
Funding: UK Engineering and Physical Sciences Research Council through grant EP/P030017/1.Collections
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