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A methodology for part classification with supervised machine learning

Academic Article
Publication Date:
2018
abstract:
In this paper, we report on a data analysis process for the automated classification of mechanical components. In particular, here, we describe, how to implement a machine learning system for the automated classification of parts belonging to several sub-categories. We collect models that are typically used in the mechanical industry, and then we represent each object by a collection of features. We illustrate how to set-up a supervised multi-layer artificial neural network with an ad-hoc classification schema. We test our solution on a dataset formed by 2354 elements described by 875 features and spanned among 15 sub-categories. We state the accuracy of classification in terms of average area under ROC curves and the ability to classify 606 unknown 3D objects by similarity coefficients. Our parts' classification system outperforms a classifier based on the Light Field Descriptor, which, as far as we know, actually represents the gold standard for the identification of most types of 3D mechanical objects.
Iris type:
01.01 Articolo in rivista
Keywords:
CAD; machine learning; shape classification; shape recognition; 3D Search
List of contributors:
Lupinetti, Katia; Rucco, Matteo; Monti, Marina; Giannini, Franca
Authors of the University:
GIANNINI FRANCA
LUPINETTI KATIA
Handle:
https://iris.cnr.it/handle/20.500.14243/370086
Published in:
ARTIFICIAL INTELLIGENCE FOR ENGINEERING DESIGN, ANALYSIS AND MANIFACTURING
Journal
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URL

https://www.cambridge.org/core/journals/ai-edam/article/methodology-for-part-classification-with-supervised-machine-learning/69D95B66344317AE778C1058993BC2B9
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