Inverse Material Search and Synthesis Verification by Hand Drawings via Transfer Learning and Contour Detection

Nano‐ and micromaterials of various morphologies and compositions have extensive use in many different areas. However, the search for procedures giving custom nanomaterials with the desired structure, shape, and size remains a challenge and is often implemented by manual article screening. Here, for...

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Veröffentlicht in:Small methods 2022-05, Vol.6 (5), p.e2101619-n/a
Hauptverfasser: Serov, Nikita, Vinogradov, Vladimir
Format: Artikel
Sprache:eng
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Zusammenfassung:Nano‐ and micromaterials of various morphologies and compositions have extensive use in many different areas. However, the search for procedures giving custom nanomaterials with the desired structure, shape, and size remains a challenge and is often implemented by manual article screening. Here, for the first time, scanning and transmission electron microscopy inverse image search and hand drawing‐based search via transfer learning are developed, namely, VGG16 convolution neural network repurposing for image features extraction and image similarity determination. Moreover, the case use of this platform is demonstrated on the calcium carbonate system, where the data are acquired by random high throughput experimental synthesis, and on Au nanoparticles data extracted from the articles. This approach can be used for advanced nanomaterials search, synthesis procedure verification, and can be further combined with machine learning solutions to provide data‐driven nanomaterials discovery. The search for a synthesis based on nanomaterial desired structure remains a challenge. Electron microscopy inverse search via transfer learning is implemented. Case use of the platform on data acquired by high throughput synthesis and extracted from the articles, is demonstrated. Approach can be used for nanomaterial search and further combined with machine learning to provide nanomaterial discovery.
ISSN:2366-9608
2366-9608
DOI:10.1002/smtd.202101619