Nanoparticle classification in wide-field interferometric microscopy by supervised learning from model
Files
Accepted manuscript
Date
2017-05-20
Authors
Avci, Oguzhan
Yurdakul, Celalettin
Unlu, M. Selim
Version
Published version
OA Version
Citation
Oguzhan Avci, Celalettin Yurdakul, M Selim Unlu. 2017. "Nanoparticle classification in wide-field interferometric microscopy by supervised learning from model." APPLIED OPTICS, Volume 56, Issue 15, pp. 4238 - 4242 (5). https://doi.org/10.1364/AO.56.004238
Abstract
Interference-enhanced wide-field nanoparticle imaging is a highly sensitive technique that has found numerous applications in labeled and label-free subdiffraction-limited pathogen detection. It also provides unique opportunities for nanoparticle classification upon detection. More specifically, the nanoparticle defocus images result in a particle-specific response that can be of great utility for nanoparticle classification, particularly based on type and size. In this work, we combine a model-based supervised learning algorithm with a wide-field common-path interferometric microscopy method to achieve accurate nanoparticle classification. We verify our classification schemes experimentally by blindly detecting gold and polystyrene nanospheres, and then classifying them in terms of type and size.
Description
License
"Copyright 2017 Optical Society of America. The final author draft of this article is being made available in OpenBU under Boston University's open access.policy."