Difference between revisions of "Projects/SRF: Syncrotron radiation facility deep image retrieval"

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(Created page with "===Project 58 === * Title: X-ray nanotomographyimage reconstruction * Peoblem: To boost quality of nano-, полученных в лабораториях Европейско...")
 
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===Project 58 ===
 
===Project 58 ===
 
* Title: X-ray nanotomographyimage reconstruction
 
* Title: X-ray nanotomographyimage reconstruction
* Peoblem: To boost quality of nano-, полученных в лабораториях Европейского фонда синхротронного излучения.
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* Peoblem: To boost quality of nano-object images, obtained in the European Syncrotron Radiation Facility, [https://www.osug.fr/IMG/pdf/zontone_osug_workshop2017id10.pdf ESRF].
* Data: on your request, 3GB, [https://www.esrf.eu/ ESRF: European Syncrotron Radiation Facility]
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* Data: on your request, 3GB
 
* References:
 
* References:
 
** [https://arxiv.org/pdf/1809.04626.pdf] Iterative phase retrieval in coherent diffractive imaging: practical issues
 
** [https://arxiv.org/pdf/1809.04626.pdf] Iterative phase retrieval in coherent diffractive imaging: practical issues

Revision as of 19:47, 20 August 2020

Project 58

  • Title: X-ray nanotomographyimage reconstruction
  • Peoblem: To boost quality of nano-object images, obtained in the European Syncrotron Radiation Facility, ESRF.
  • Data: on your request, 3GB
  • References:
    • [1] Iterative phase retrieval in coherent diffractive imaging: practical issues
    • [2] X-ray nanotomography of coccolithophores reveals that coccolith mass and segment number correlate with grid size
    • [3] Lens-free microscopy for 3D + time acquisitions of 3D cell culture
    • [4] DEEP ITERATIVE RECONSTRUCTION FOR PHASE RETRIEVAL
    • LinkReview
    • AUSPEX is a diagnostic tool for graphical X-Ray data analysis, see common pathologies and their causes
  • Basic: Gerchberg-Saxton algorithm
  • Method: To boost Gerchberg-Saxton with neural networks. Use Bayesian approach and set physical models as expert-given prior information
  • Novelty: we are developing expert learning method
  • Authors: Sergei Grudinin, Yuri Chushkin, and Vadim Strijov