Titel: Fault detection of cardboard boxes using Computer Vision and Deep Learning
Översikt
- Datum:Startar 24 augusti 2023, 13:00Slutar 24 augusti 2023, 14:00
- Plats:
- Språk:Svenska och engelska
Examinator: Erik Agrell
Abstract:
Because of extensive downtime caused by damaged cardboard boxes at an automated warehouse in Vänersborg, Sweden. In this study we examine the possibility of using computer vision and artificial intelligence when identifying irregularities among the handled boxes. As a motive for doing this study it is assumed that a fault detection application based on computer vision and artificial intelligence would be cost effective. A dataset containing images of both damaged and unharmed boxes were gathered and used to train the convolutional neural networks. Due to the small size of the dataset, transfer learning was used to speed up the learning process. The hyperparameter values were altered throughout the process to maximize the validation accuracy. To decide upon suitable hyperparameter values, hyperparameter values are optimized through Bayesian optimization techniques. Our results showed that the outcome of DarkNet-19 as the best network fitting our problem.
Welcome!
Lars Kristian and Erik