PCB-IND: Industrial Printed Circuit Board Surface Defect Dataset for Object Detection
收藏Zenodo2026-04-24 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.17988285
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资源简介:
PCB-IND is an industrial printed circuit board (PCB) surface defect dataset for object detection. The dataset contains 4,789 ROI images collected from a real automated optical inspection (AOI) production line and covers eight defect categories: mouse_bite, missing_copper, scratch, spurious_copper, copper_burr, stain, short, and open.
The dataset is split into training (3,833 images), validation (478 images), and test (478 images) subsets. All image patches are provided at a fixed resolution of 300 × 300 pixels. Verified annotations are released in YOLO, PASCAL VOC, and MS COCO formats to support different object detection frameworks.
To improve release consistency and reproducibility, the updated version includes a machine-readable label map file (classes.json) and a revised README file that explicitly documents the official class definitions, dataset organization, and annotation formats. The dataset is primarily intended for AOI candidate verification and patch-level defect detection under real industrial imaging conditions.
License: CC BY 4.0.
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Zenodo创建时间:
2025-12-19



