A transfer learning approach for improved classification of carbon nanomaterials from TEM images
Qixiang Luo, Elizabeth A. Holm, Chen Wang
Abstract
-means and processed into a Vector of Locally Aggregated Descriptors (VLAD) representation to train a softmax classifier with the gradient boosting algorithm. This method achieved 90.9% accuracy on the classification of a 4-class dataset and 84.5% accuracy on a more complex 8-class dataset. The developed model established a framework to automatically detect and classify complex carbon nanostructures with potential applications that extend to the automated structural classification for other nanomaterials.
Topics & Concepts
NanomaterialsCarbon fibersMaterials scienceTransfer of learningNanotechnologyArtificial intelligenceComputer scienceComposite numberComposite materialMineral Processing and GrindingGeochemistry and Geologic MappingMachine Learning in Materials Science