Literature DB >> 32629955

Nanoparticle Recognition on Scanning Probe Microscopy Images Using Computer Vision and Deep Learning.

Alexey G Okunev1,2, Mikhail Yu Mashukov3, Anna V Nartova2,3, Andrey V Matveev2,3.   

Abstract

Identifying, counting and measuring particles is an important component of many research studies. Images with particles are usually processed by hand using a software ruler. Automated processing, based on conventional image processing methods (edge detection, segmentation, etc.) are not universal, can only be used on good-quality images and need to set a number of parameters empirically. In this paper, we present results from the application of deep learning to automated recognition of metal nanoparticles deposited on highly oriented pyrolytic graphite on images obtained by scanning tunneling microscopy (STM). We used the Cascade Mask-RCNN neural network. Training was performed on a dataset containing 23 STM images with 5157 nanoparticles. Three images containing 695 nanoparticles were used for verification. As a result, the trained neural network recognized nanoparticles in the verification set with 0.93 precision and 0.78 recall. Predicted contour refining with 2D Gaussian function was a proposed option. The accuracies for mean particle size calculated from predicted contours compared with ground truth were in the range of 0.87-0.99. The results were compared with outcomes from other generally available software, based on conventional image processing methods. The advantages of deep learning methods for automatic particle recognition were clearly demonstrated. We developed a free open-access web service "ParticlesNN" based on the trained neural network, which can be used by any researcher in the world.

Entities:  

Keywords:  deep neural networks; particle recognition; particles; scanning tunneling microscopy

Year:  2020        PMID: 32629955     DOI: 10.3390/nano10071285

Source DB:  PubMed          Journal:  Nanomaterials (Basel)        ISSN: 2079-4991            Impact factor:   5.076


  6 in total

Review 1.  Digital Innovation Enabled Nanomaterial Manufacturing; Machine Learning Strategies and Green Perspectives.

Authors:  Georgios Konstantopoulos; Elias P Koumoulos; Costas A Charitidis
Journal:  Nanomaterials (Basel)       Date:  2022-08-01       Impact factor: 5.719

2.  Nanoparticle Detection on SEM Images Using a Neural Network and Semi-Synthetic Training Data.

Authors:  Jorge David López Gutiérrez; Itzel Maria Abundez Barrera; Nayely Torres Gómez
Journal:  Nanomaterials (Basel)       Date:  2022-05-26       Impact factor: 5.719

3.  Deep Learning Based Instance Segmentation of Titanium Dioxide Particles in the Form of Agglomerates in Scanning Electron Microscopy.

Authors:  Paul Monchot; Loïc Coquelin; Khaled Guerroudj; Nicolas Feltin; Alexandra Delvallée; Loïc Crouzier; Nicolas Fischer
Journal:  Nanomaterials (Basel)       Date:  2021-04-09       Impact factor: 5.076

4.  Tracking Nanoparticle Degradation across Fuel Cell Electrodes by Automated Analytical Electron Microscopy.

Authors:  Haoran Yu; Michael J Zachman; Kimberly S Reeves; Jae Hyung Park; Nancy N Kariuki; Leiming Hu; Rangachary Mukundan; Kenneth C Neyerlin; Deborah J Myers; David A Cullen
Journal:  ACS Nano       Date:  2022-07-22       Impact factor: 18.027

5.  Near-Ambient Pressure XPS and MS Study of CO Oxidation over Model Pd-Au/HOPG Catalysts: The Effect of the Metal Ratio.

Authors:  Andrey V Bukhtiyarov; Igor P Prosvirin; Maxim A Panafidin; Alexey Yu Fedorov; Alexander Yu Klyushin; Axel Knop-Gericke; Yan V Zubavichus; Valery I Bukhtiyarov
Journal:  Nanomaterials (Basel)       Date:  2021-12-04       Impact factor: 5.076

6.  AI-based atomic force microscopy image analysis allows to predict electrochemical impedance spectra of defects in tethered bilayer membranes.

Authors:  Tomas Raila; Tadas Penkauskas; Filipas Ambrulevičius; Marija Jankunec; Tadas Meškauskas; Gintaras Valinčius
Journal:  Sci Rep       Date:  2022-01-21       Impact factor: 4.379

  6 in total

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