The objective of this study is to identify the optimal object detection architecture for training on a specific type of defect detection, namely incorrectly polished surfaces on aluminium elements. In order to facilitate a meaningful comparison of the various architectures, a maximum training time of approximately one hour was established for each architecture. Using the Darknet framework and a specific dataset, five architectures were compared (for the time being). The parameters of the various architectures, including network size, number of batches, and so forth, were modified according to a well-defined and systematic procedure. The preliminary findings indicate that the YOLOv4-tiny network exhibits superior training performance on this dataset, rendering it an optimal choice for industrial applications. This research provides support to small and medium-sized enterprises (SMEs) by identifying effective object detection architectures for quality control and highlighting avenues for advancing AI-driven defect detection in manufacturing.

A Comparative Analysis on a Limited Image Dataset for Accurately Detecting Improperly Polished Surfaces for Industrial Applications / Bajrami, A.; Palpacelli, M. C.; Lettera, G.; Pantanetti, S.. - ELETTRONICO. - (2024). (Intervento presentato al convegno 20th IEEE/ASME International Conference on Mechatronic, Embedded Systems and Applications, MESA 2024 tenutosi a Genova, Italy nel 2 -4 September 2024) [10.1109/MESA61532.2024.10704894].

A Comparative Analysis on a Limited Image Dataset for Accurately Detecting Improperly Polished Surfaces for Industrial Applications

Bajrami A.;Palpacelli M. C.;Lettera G.;Pantanetti S.
2024-01-01

Abstract

The objective of this study is to identify the optimal object detection architecture for training on a specific type of defect detection, namely incorrectly polished surfaces on aluminium elements. In order to facilitate a meaningful comparison of the various architectures, a maximum training time of approximately one hour was established for each architecture. Using the Darknet framework and a specific dataset, five architectures were compared (for the time being). The parameters of the various architectures, including network size, number of batches, and so forth, were modified according to a well-defined and systematic procedure. The preliminary findings indicate that the YOLOv4-tiny network exhibits superior training performance on this dataset, rendering it an optimal choice for industrial applications. This research provides support to small and medium-sized enterprises (SMEs) by identifying effective object detection architectures for quality control and highlighting avenues for advancing AI-driven defect detection in manufacturing.
2024
979-8-3315-1623-9
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/341193
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