Defect Detection Dataset: Porosities in Machined Aluminum Holes

This dataset comprises 302 JPEG images captured with an endoscopic camera, focusing on detecting porosities in the machined holes inner walls of cast aluminum parts. Each image has a resolution of 400x400 pixels in RGB color space, providing detailed views of potential defects.

The dataset is intended for developing and evaluating algorithms for automated defect detection in industrial manufacturing, specifically targeting porosity defects in aluminum casting processes. It does not include annotations or labels.

Researchers can use these images to:

Train and test machine learning models for defect detection. * Explore characteristics and distributions of porosity defects in machined holes. Develop algorithms for automated quality control in manufacturing settings.

Preprocessing such as normalization and resizing may be necessary before applying the images to machine learning tasks.

Dati un resursi

Papildus informācija

Lauks Vērtība
Autors
Pēdējā atjaunināšana jūnijs 27, 2024, 09:16 (UTC)
Izveidots jūnijs 27, 2024, 08:46 (UTC)
Citation Nascimento, R. P., Rocha, C. D., & Garcia Gonzalez, D. (2024). Defect Detection Dataset: Porosities in Machined Aluminum Holes [Data set]. Institute for Systems and Computer Engineering of Porto.Nascimento, R. P., Rocha, C. D., & Garcia Gonzalez, D. (2024). Defect Detection Dataset: Porosities in Machined Aluminum Holes [Data set]. Institute for Systems and Computer Engineering of Porto. Nascimento, R. P., Rocha, C. D., & Garcia Gonzalez, D. (2024). Defect Detection Dataset: Porosities in Machined Aluminum Holes [Data set]. Institute for Systems and Computer Engineering of Porto. https://doi.org/10.25747/KBZB-R124
Contributor Tiago Silva (Sentinel Vision) and Luís F. Rocha (INESC TEC)
Creation Date 2024-05-10
DOI https://doi.org/10.25747/KBZB-R124
Data Collection Method Image acquisition of machine holes inner walls of cast aluminum parts
Instrument SF-CQ6USB-D2.0 Endoscopic camera
Language EN
Project Hi_rEV
Size 17,4 MB
Temporal Coverage Data colllected in a period of two weeks