Enregistré dans:
Détails bibliographiques
Auteurs principaux: McHard, Paul, Audonnet, Florent P., Summerell, Oliver, Andraos, Sebastian, Henderson, Paul, Aragon-Camarasa, Gerardo
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2507.07838
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866908553834397696
author McHard, Paul
Audonnet, Florent P.
Summerell, Oliver
Andraos, Sebastian
Henderson, Paul
Aragon-Camarasa, Gerardo
author_facet McHard, Paul
Audonnet, Florent P.
Summerell, Oliver
Andraos, Sebastian
Henderson, Paul
Aragon-Camarasa, Gerardo
contents Surface defects are a primary source of yield loss in manufacturing, yet existing anomaly detection methods often fail in real-world deployment due to limited and unrepresentative datasets. To overcome this, we introduce 3D-ADAM, a 3D Anomaly Detection in Additive Manufacturing dataset, that is the first large-scale, industry-relevant dataset for RGB+3D surface defect detection in additive manufacturing. 3D-ADAM comprises 14,120 high-resolution scans of 217 unique parts, captured with four industrial depth sensors, and includes 27,346 annotated defects across 12 categories along with 27,346 annotations of machine element features in 16 classes. 3D-ADAM is captured in a real industrial environment and as such reflects real production conditions, including variations in part placement, sensor positioning, lighting, and partial occlusion. Benchmarking state-of-the-art models demonstrates that 3D-ADAM presents substantial challenges beyond existing datasets. Validation through expert labelling surveys with industry partners further confirms its industrial relevance. By providing this benchmark, 3D-ADAM establishes a foundation for advancing robust 3D anomaly detection capable of meeting manufacturing demands.
format Preprint
id arxiv_https___arxiv_org_abs_2507_07838
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle 3D-ADAM: A Dataset for 3D Anomaly Detection in Additive Manufacturing
McHard, Paul
Audonnet, Florent P.
Summerell, Oliver
Andraos, Sebastian
Henderson, Paul
Aragon-Camarasa, Gerardo
Computer Vision and Pattern Recognition
Surface defects are a primary source of yield loss in manufacturing, yet existing anomaly detection methods often fail in real-world deployment due to limited and unrepresentative datasets. To overcome this, we introduce 3D-ADAM, a 3D Anomaly Detection in Additive Manufacturing dataset, that is the first large-scale, industry-relevant dataset for RGB+3D surface defect detection in additive manufacturing. 3D-ADAM comprises 14,120 high-resolution scans of 217 unique parts, captured with four industrial depth sensors, and includes 27,346 annotated defects across 12 categories along with 27,346 annotations of machine element features in 16 classes. 3D-ADAM is captured in a real industrial environment and as such reflects real production conditions, including variations in part placement, sensor positioning, lighting, and partial occlusion. Benchmarking state-of-the-art models demonstrates that 3D-ADAM presents substantial challenges beyond existing datasets. Validation through expert labelling surveys with industry partners further confirms its industrial relevance. By providing this benchmark, 3D-ADAM establishes a foundation for advancing robust 3D anomaly detection capable of meeting manufacturing demands.
title 3D-ADAM: A Dataset for 3D Anomaly Detection in Additive Manufacturing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.07838