Computational methods in super-resolution microscopy

Citation:

Zeng ZP, Xie H, Chen L, Zhanghao K, Zhao K, Yang XS, Xi P. Computational methods in super-resolution microscopy. Frontiers of Information Technology & Electronic Engineering [Internet]. 2017;18(9):1222-1235.

摘要:

The broad applicability of super-resolution microscopy has been widely demonstrated in various areas and disciplines. The optimization and improvement of algorithms used in super-resolution microscopy are of great importance for achieving optimal quality of super-resolution imaging. In this review, we comprehensively discuss the computational methods in different types of super-resolution microscopy, including deconvolution microscopy, polarization-based super-resolution microscopy, structured illumination microscopy, image scanning microscopy, super-resolution optical fluctuation imaging microscopy, single-molecule localization microscopy, Bayesian super-resolution microscopy, stimulated emission depletion microscopy, and translation microscopy. The development of novel computational methods would greatly benefit super-resolution microscopy and lead to better resolution, improved accuracy, and faster image processing.

附注:

Fl2djTimes Cited:3Cited References Count:57

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