Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group

Dynamic imaging and characterization of volatile aerosols using deep learning-based holographic microscopy

Not Accessible

Your library or personal account may give you access

Abstract

A field-portable device that can directly measure the volatility of particulate matter using holographic microscopy and deep learning is introduced. To demonstrate its proof-of-concept, we quantified the volatility of electronic cigarette emissions.

© 2021 The Author(s)

PDF Article  |   Presentation Video
More Like This
Characterization of exhaled e-cigarette aerosols in a vape shop using a field-portable holographic on-chip microscope

Ege Çetintaş, Yi Luo, Charlene Nguyen, Yuening Guo, Liqiao Li, Yifang Zhu, and Aydogan Ozcan
AM5M.6 CLEO: Applications and Technology (CLEO:A&T) 2022

Label-free Bio-aerosol Sensing Using On-Chip Holographic Microscopy and Deep Learning

Yichen Wu, Ayfer Calis, Yi Luo, Cheng Chen, Maxwell Lutton, Yair Rivenson, Xing Lin, Hatice Ceylan Koydemir, Yibo Zhang, Hongda Wang, Zoltán Göröcs, and Aydogan Ozcan
AM2K.3 CLEO: Applications and Technology (CLEO:A&T) 2019

Portable Imaging Flow cytometer Using Deep Learning based Holographic Image Reconstruction

Zoltán Gӧrӧcs, Miu Tamamitsu, Vittorio Bianco, Patrick Wolf, Shounak Roy, Koyoshi Shindo, Kyrollos Yanny, Yichen Wu, Hatice Ceylan Koydemir, Yair Rivenson, and Aydogan Ozcan
SM4H.2 CLEO: Science and Innovations (CLEO:S&I) 2019

Presentation Video

Presentation video access is available to:

  1. Optica Publishing Group subscribers
  2. Technical meeting attendees
  3. Optica members who wish to use one of their free downloads. Please download the article first. After downloading, please refresh this page.

Contact your librarian or system administrator
or
Log in to access Optica Member Subscription or free downloads


More Like This
Characterization of exhaled e-cigarette aerosols in a vape shop using a field-portable holographic on-chip microscope

Ege Çetintaş, Yi Luo, Charlene Nguyen, Yuening Guo, Liqiao Li, Yifang Zhu, and Aydogan Ozcan
AM5M.6 CLEO: Applications and Technology (CLEO:A&T) 2022

Label-free Bio-aerosol Sensing Using On-Chip Holographic Microscopy and Deep Learning

Yichen Wu, Ayfer Calis, Yi Luo, Cheng Chen, Maxwell Lutton, Yair Rivenson, Xing Lin, Hatice Ceylan Koydemir, Yibo Zhang, Hongda Wang, Zoltán Göröcs, and Aydogan Ozcan
AM2K.3 CLEO: Applications and Technology (CLEO:A&T) 2019

Portable Imaging Flow cytometer Using Deep Learning based Holographic Image Reconstruction

Zoltán Gӧrӧcs, Miu Tamamitsu, Vittorio Bianco, Patrick Wolf, Shounak Roy, Koyoshi Shindo, Kyrollos Yanny, Yichen Wu, Hatice Ceylan Koydemir, Yair Rivenson, and Aydogan Ozcan
SM4H.2 CLEO: Science and Innovations (CLEO:S&I) 2019

Deep-learning-enabled Holographic Polarization Microscopy

Tairan Liu, Kevin de Haan, Bijie Bai, Yair Rivenson, Yi Luo, Hongda Wang, David Karalli, Hongxiang Fu, Yibo Zhang, John FitzGerald, and Aydogan Ozcan
ATh4F.5 CLEO: Applications and Technology (CLEO:A&T) 2021

Web Based Methodology for Holographic Learning on Microscopy Patterns Recognition

Andouglas Goncalves da Silva Junior, Pierluigi Carcagnì, Pasquale Memmolo, Vittorio Bianco, Teresa Cacace, Francesco Merola, Luiz Marcos Garcia Goncalves, Cosimo Distante, and Pietro Ferraro
IW4A.5 Imaging Systems and Applications (IS) 2021

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.