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Deep learning based baynat foam classification for headliners manufacturing

R.S. Muthuselvam, R. Moreno, M. Guemes, M. Del Río Cristobal, I. de Rodrigo, A.J. López López

17th International Conference on Soft Computing Models in Industrial and Environmental Applications - SOCO 2022, Salamanca (España). 05-07 septiembre 2022


Resumen:

This paper shows the performance of four deep learning algorithms on Baynat foam classification (Resnet, Mobilenet, Inception and Xception). One of the key components on headliner manufacturing is the foam. It provides acoustic isolation, lightness and robustness. Together with foam, other components are added such as textile fabrics and fiber components. Depending on the foam cell-size distribution, right amount of glue to be applied is determined correspondingly. This paper introduce AI algorithms on foam classification. The experiments are carried out using a dataset of 3000 images of foam cuts obtained from a single foam block.


DOI: DOI icon https://doi.org/10.1007/978-3-031-18050-7_37

Fecha de publicación: septiembre 2022.



Cita:
Muthuselvam, R.S., Moreno, R., Guemes, M., Del Río Cristobal, M., Rodrigo, I. de, López López, A.J., Deep learning based baynat foam classification for headliners manufacturing, 17th International Conference on Soft Computing Models in Industrial and Environmental Applications - SOCO 2022, Salamanca (España). 05-07 septiembre 2022.

IIT-22-265C