Silvia Pappalardo
Neural models application for image recognition in the field of industrial automation.
Rel. Luca Bergamasco, Matteo Fasano, Paolo De Angelis, Marco Porrati. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Meccanica, 2021
Abstract
Artificial Intelligence is emerging as a disruptive technological field, with the potential to revolutionize the industrial world. In this context, Machine Learning is generally referred to as a branch of techniques which are designed to allow machines to learn and extract patterns from data. Among these, the so-called Deep Learning models have received particular interest for their potential to reduce human operations in several different applications. In this thesis, the attention is focused on the development and applicability of these models to image recognition and classification for industrial automation. In particular, the considered test case focuses on the automation of the quality control of brake calipers, from an important automotive player, in a typical production line of a company specialized in industrial automation.
Particularly, Neural Network models are developed and trained, on a proper database, to be able to screen and identify different defects which may be present (such as imperfections, scratches or bubbles on the painted surface)
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