Automated Recognition of Nanoparticles in Electron Microscopy Images of Nanoscale Palladium Catalysts.
Daniil A BoikoValentina V SulimovaMikhail Yu KurbakovAndrei V KopylovOleg S SeredinVera A CherepanovaEvgeniy O PentsakValentine P AnanikovPublished in: Nanomaterials (Basel, Switzerland) (2022)
Automated computational analysis of nanoparticles is the key approach urgently required to achieve further progress in catalysis, the development of new nanoscale materials, and applications. Analysis of nanoscale objects on the surface relies heavily on scanning electron microscopy (SEM) as the experimental analytic method, allowing direct observation of nanoscale structures and morphology. One of the important examples of such objects is palladium on carbon catalysts, allowing access to various chemical reactions in laboratories and industry. SEM images of Pd/C catalysts show a large number of nanoparticles that are usually analyzed manually. Manual analysis of a statistically significant number of nanoparticles is a tedious and highly time-consuming task that is impossible to perform in a reasonable amount of time for practically needed large amounts of samples. This work provides a comprehensive comparison of various computer vision methods for the detection of metal nanoparticles. In addition, multiple new types of data representations were developed, and their applicability in practice was assessed.
Keyphrases
- electron microscopy
- deep learning
- atomic force microscopy
- machine learning
- highly efficient
- healthcare
- convolutional neural network
- primary care
- optical coherence tomography
- high resolution
- walled carbon nanotubes
- big data
- artificial intelligence
- electronic health record
- working memory
- metal organic framework
- single molecule
- single cell
- real time pcr