Multi-label classification algorithms for composite materials under infrared thermography testing

Date

2022-10-14

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Volume Title

Publisher

Taylor and Francis

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Article

ISSN

1768-6733

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Citation

Alhammad M, Avdelidis NP, Ibarra Castenado C, et al., (2024) Multi-label classification algorithms for composite materials under infrared thermography testing. Quantitative InfraRed Thermography Journal, Volume 21, Issue 1, 2024, pp. 3-29

Abstract

The key idea in this paper is to propose multi-labels classification algorithms to handle benchmark thermal datasets that are practically associated with different data characteristics and have only one health condition (damaged composite materials). A suggested alternative approach for extracting the statistical contents from the thermal images, is also employed. This approach offers comparable advantages for classifying multi-labelled datasets over more complex methods. Overall scored accuracy of different methods utilised in this approach showed that Random Forest algorithm has a clear higher performance over the others. This investigation is very unique as there has been no similar work published so far. Finally, the results demonstrated in this work provide a new perspective on the inspection of composite materials using Infrared Pulsed Thermography.

Description

Software Description

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Github

Keywords

composite materials, infrared thermography, thermal datasets, machine learning, multi-label classification

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Attribution 4.0 International

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