Título
Deflectometric data segmentation for surface inspection: a fully convolutional neural network approachVersión
Postprint
Derechos
© 2020 Society of Photo-Optical Instrumentation EngineersAcceso
Acceso abiertoVersión del editor
https://doi.org/10.1117/1.JEI.29.4.041007Publicado en
Journal of Electronic Imaging Vol. 29. N. 4. N. artículo, 041007, 2020Editor
SPIEPalabras clave
Specular surfacesDefect detection
Deflectometry
Artificial Neural Networks
Resumen
The purpose of this paper is to explore the use of fully convolutional neural networks (FCN) to perform a semantic segmentation of deflectometric recordings for quality control of reflective surfaces. ... [+]
The purpose of this paper is to explore the use of fully convolutional neural networks (FCN) to perform a semantic segmentation of deflectometric recordings for quality control of reflective surfaces. The proposed method relies on a U-net network to identify the location and boundaries of the object and the possible defective areas present on it by performing a pixel-wise classification based on local curvatures and data modulation. Experiments were performed on a real industrial problem using four variations of the architecture. The results demonstrate that the method combining geometric and photometric information enables the identification of a wider variety of shape and texture imperfections, with the resulting segmentations closely correlated with the visual impact of the defects. In addition, several suggestions are presented for near-term industrial utilization. [-]
Financiador
Gobierno VascoGobierno Vasco
Programa
Convocatoria Universidad Empresa 2018-2019Ikertalde Convocatoria 2019-2021
Número
PUE 2018-06IT1357-19
URI de la ayuda
Sin informaciónSin información
Proyecto
Desarrollo de un sistema de inspección inteligente basado en algoritmos de Deep Learning para células robotizadas flexibles multi-puesto 3D (IDEFIX)Sistemas Inteligentes para Sistemas Industriales (IKERTALDE 2019-2021)
Colecciones
- Artículos - Ingeniería [708]