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Quality inspection inspection systems are critical for maintaining product integrity. Being a repetitive task, when performed by operators only, it can be slow and error-prone. This paper introduces an automated inspection system for quality assessment in casting aluminum parts resorting to a robotic system. The method comprises two processes: filing detection and hole inspection. For filing detection, five deep learning modes were trained. These models include an object detector and four instance segmentation models: YOLOv8, YOLOv8n-seg, YOLOv8s-seg, YOLOv8m-seg, and Mask R-CNN, respectively. Among these, YOLOv8s-seg exhibited the best overall performance, achieving a recall rate of 98.10%, critical for minimizing false negatives and yielding the best overall results. Alongside, the system inspects holes, utilizing image processing techniques like template-matching and blob detection, achieving a 97.30% accuracy and a 2.67% Percentage of Wrong Classifications. The system improves inspection precision and efficiency while supporting sustainability and ergonomic standards, reducing material waste and reducing operator fatigue.
Details
; Ferreira, Tony 2
; Rocha, Cláudia D. 2
; Filipe, Vítor 1
; Silva, Manuel F. 3
; Veiga, Germano 2
; Rocha, Luis 2
1 INESC TEC-Institute for Systems and Computer Engineering Technology and Science, Porto, Portugal (GRID:grid.20384.3d) (ISNI:0000 0001 0756 9687); UTAD - University of Trás-os-Montes and Alto Douro, Vila Real, Portugal (GRID:grid.12341.35) (ISNI:0000 0001 2182 1287)
2 INESC TEC-Institute for Systems and Computer Engineering Technology and Science, Porto, Portugal (GRID:grid.20384.3d) (ISNI:0000 0001 0756 9687)
3 INESC TEC-Institute for Systems and Computer Engineering Technology and Science, Porto, Portugal (GRID:grid.20384.3d) (ISNI:0000 0001 0756 9687); ISEP - Polytechnic of Porto, Porto, Portugal (GRID:grid.20384.3d)