Abstract
Nanomaterials of various morphologies and chemistry
have an extensive use as photonic devices, advanced
catalysts, sorbents for water purification, agrochemicals, platforms for drug
delivery as well as imaging systems to name a few. However, search for
synthesis routes giving custom nanomaterials for particular needs with the desired
structure, shape, and size remains a challenge and is often implemented by
manual research articles screening. Here, we develop for the first time scanning
and transmission electron microscopy (SEM/TEM) reverse image search and hand
drawing-based search via transfer learning (TL), namely, VGG16
convolutional neural network (CNN) repurposing for image features extraction
and subsequent image similarity determination. Moreover, we demonstrate case
use of this platform on calcium carbonate system, where sufficient amount of
data was acquired by random high throughput multiparametric synthesis, as well
as on Au nanoparticles (NPs) data extracted from the articles. This approach can
be not only used for advanced nanomaterials search and synthesis procedure
verification, but also can be further combined with machine learning (ML)
solutions to provide data-driven novel nanomaterials discovery.
Supplementary materials
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