This contribution gives an overview of an ongoing project using machine learning and computer vision components for improving the electronic waste recycling process. In circular economy, the “virtual mines” concept refers to production cycles where interesting raw materials are reclaimed in an efficient and cost-effective manner from end-of-life items. In particular, the growth of e-waste, due to the increasingly shorter life cycle of hi-tech goods, is a global problem. In this paper, we describe a pipeline based on deep learning model to recycle printed circuit boards at the component level. A pre-trained YOLOv5 model is used to analyze the results of the locally developed dataset. With a different distribution of class instances, YOLOv5 managed to achieve satisfactory precision and recall, with the ability to optimize with large component instances.
Virtual Mines Component-Level Recycling of Printed Circuit Boards Using Deep Learning / M. Mohsin, S. Rovetta, F. Masulli, A. Cabri (SMART INNOVATION, SYSTEMS AND TECHNOLOGIES). - In: Advanced Neural Artificial Intelligence: Theories and Applications / [a cura di] A. Esposito, M. Faundez-Zanuy, F.C. Morabito, E. Pasero, G. Cordasco. - [s.l] : Springer Science and Business Media Deutschland GmbH, 2025. - ISBN 978-981-96-0993-2. - pp. 35-44 (( Intervento presentato al 30. convegno International Workshops on Neural Network, WIRN 2023 tenutosi a Vietri Sul Mare nel 2023 [10.1007/978-981-96-0994-9_4].
Virtual Mines Component-Level Recycling of Printed Circuit Boards Using Deep Learning
A. Cabri
2025
Abstract
This contribution gives an overview of an ongoing project using machine learning and computer vision components for improving the electronic waste recycling process. In circular economy, the “virtual mines” concept refers to production cycles where interesting raw materials are reclaimed in an efficient and cost-effective manner from end-of-life items. In particular, the growth of e-waste, due to the increasingly shorter life cycle of hi-tech goods, is a global problem. In this paper, we describe a pipeline based on deep learning model to recycle printed circuit boards at the component level. A pre-trained YOLOv5 model is used to analyze the results of the locally developed dataset. With a different distribution of class instances, YOLOv5 managed to achieve satisfactory precision and recall, with the ability to optimize with large component instances.| File | Dimensione | Formato | |
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