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JOURNALS // Computer Optics // Archive

Computer Optics, 2023 Volume 47, Issue 2, Pages 314–322 (Mi co1130)

This article is cited in 5 papers

NUMERICAL METHODS AND DATA ANALYSIS

Application of generative adversarial neural networks for the formation of databases in scanning tunneling microscopy

T. E. Shelkovnikova, S. F. Egorov, P. V. Gulyaev

Udmurt Federal Research Center of the Ural Branch of the Russian Academy of Sciences, Izhevsk

Abstract: We discuss the development of a technique for automatic generation of databases of images obtained with a scanning tunneling microscope. An analysis of state-of-the-art methods and means of automatic processing of images obtained from probe and electron microscopes is carried out. We proposed using generative-adversarial networks for generating images taken with a scanning tunneling microscope to form training databases of images. A process of training and comparison of deep convolutional generative adversarial network (DCGAN) architectures using the OpenCV and Keras libraries together with TensorFlow is described, with the best of them identified by computing the metrics IS, FID, and KID. The scaling of images obtained from DCGAN is per-formed using a method of fine tuning of a super-resolution generative adversarial neural network (SRGAN) and bilinear interpolation based on the Python programming language. An analysis of calculated quantitative metrics values shows that the best results of image generation are obtained using DCGAN96 and SRGAN. It is found that FID and KID metric values for SRGAN method are better than values for bilinear interpolation in all cases except for DCGAN32. All calculations are performed on a GTX GeForce 1070 video card. A method for automatic generation of a scanning tunneling microscope image database based on the stepwise application of DCGAN and SRGAN is developed. Results of generation and comparison of the original image, the one obtained with DCGAN96 and the enlarged image with SRGAN are presented.

Keywords: STM-image, generative adversarial neural networks, automatic generation method, database, convolution

Received: 06.04.2022
Accepted: 08.09.2022

DOI: 10.18287/2412-6179-CO-1144



© Steklov Math. Inst. of RAS, 2024