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J. Orteu, Currently, he is the deputy director of the ICA-Albi Research Center (70 people) located within the École des Mines d' Albi in France. He is also the head of the ICA's Metrology, Identification, Control and Monitoring Group (30 people) His main interest topics are computer vision and automatic control, and he is now more specifically involved in the application of computer vision to 3-D metrology, photomechanics , process monitoring, 1991.

F. Bugarin, . From-École-nationale, and . Supérieure, Informatique, d'Hydraulique et des Télécommunications in Toulouse, France. He received his PhD in 2012 from Institut National Polytechnique, Toulouse. He was a research engineer at ICA in the Metrology, Identification, Control and Monitoring Group, and a permanent researcher at ICA in the Modeling of Mechanical Systems and Microsystems Group, 2014.