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Super-resolving microscopy images of Li-ion electrodes for fine-feature quantification using generative adversarial networks

Engineering and Technology

Super-resolving microscopy images of Li-ion electrodes for fine-feature quantification using generative adversarial networks

O. Furat, D. P. Finegan, et al.

This innovative research by Orkun Furat, Donal P. Finegan, Zhenzhen Yang, Tom Kirstein, Kandler Smith, and Volker Schmidt reveals the potential of SRGANs in enhancing the resolution of SEM images of cracked Li-ion battery cathodes. By effectively balancing volume and resolution, this study demonstrates how GANs can significantly improve crack detection, paving the way for better quantitative analysis in microscopy.

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Playback language: English
Abstract
This paper explores the use of generative adversarial networks (GANs), specifically SRGANs, to super-resolve scanning electron microscopy (SEM) images of cracked cathode materials in Li-ion batteries. The authors address the challenge of balancing image volume and resolution in characterizing fine features like cracks, which require large volumes for statistical representativity but high resolution for accurate detection. Quantitative analysis shows SRGANs outperform other networks in crack detection, making GANs a viable method for super-resolution microscopy images to enable representative quantification of fine features.
Publisher
npj Computational Materials
Published On
May 03, 2022
Authors
Orkun Furat, Donal P. Finegan, Zhenzhen Yang, Tom Kirstein, Kandler Smith, Volker Schmidt
Tags
generative adversarial networks
super-resolution
scanning electron microscopy
Li-ion batteries
crack detection
statistical representativity
quantitative analysis
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