A Molecular-MNIST Dataset for Machine Learning Study on Diffraction Imaging and Microscopy: Paper No. JTh2A.28

Yan Zhang, Steve Farrell, Michael Crowley, Lee Makowski, Jack Deslippe

Research output: Contribution to conferencePaper

Abstract

An image dataset of 10 different size molecules, where each molecule has 2,000 structural variants, is generated from the 2D cross-sectional projection of Molecular Dynamics trajectories. The purpose of this dataset is to provide a benchmark dataset for the increasing need of machine learning, deep learning and image processing on the study of scattering, imaging and microscopy.
Original languageAmerican English
Number of pages2
DOIs
StatePublished - 2020
EventBiophotonics Congress: Biomedical Optics 2020 (Translational, Microscopy, OCT, OTS, BRAIN), part of Microscopy Histopathology and Analytics 2020 - Washington, D.C.
Duration: 20 Apr 202023 Apr 2020

Conference

ConferenceBiophotonics Congress: Biomedical Optics 2020 (Translational, Microscopy, OCT, OTS, BRAIN), part of Microscopy Histopathology and Analytics 2020
CityWashington, D.C.
Period20/04/2023/04/20

NREL Publication Number

  • NREL/CP-2800-78074

Keywords

  • deep learning
  • image processing
  • molecular dynamics
  • molecules
  • photonics

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