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Deep Learning, Feature Learning, and Clustering Analysis for SEM Image Classification
Author(s) -
Rossella Aversa,
Piero Coronica,
Cristiano De Nobili,
Stefano Cozzini
Publication year - 2020
Publication title -
data intelligence
Language(s) - English
Resource type - Journals
eISSN - 2096-7004
pISSN - 2641-435X
DOI - 10.1162/dint_a_00062
Subject(s) - artificial intelligence , cluster analysis , pattern recognition (psychology) , unsupervised learning , computer science , curse of dimensionality , machine learning , dimensionality reduction , supervised learning , set (abstract data type) , semi supervised learning , contextual image classification , deep learning , feature (linguistics) , range (aeronautics) , image (mathematics) , artificial neural network , materials science , linguistics , philosophy , composite material , programming language
In this paper, we report upon our recent work aimed at improving and adapting machine learning algorithms to automatically classify nanoscience images acquired by the Scanning Electron Microscope (SEM). This is done by coupling supervised and unsupervised learning approaches. We first investigate supervised learning on a ten-category data set of images and compare the performance of the different models in terms of training accuracy. Then, we reduce the dimensionality of the features through autoencoders to perform unsupervised learning on a subset of images in a selected range of scales (from 1 μm to 2 μm). Finally, we compare different clustering methods to uncover intrinsic structures in the images.

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