CVMar 15, 2024

Open Stamped Parts Dataset

arXiv:2403.10369v3h-index: 232024 IEEE 20th International Conference on Automation Science and Engineering (CASE)
Originality Synthesis-oriented
AI Analysis

This provides a dataset for researchers in auto manufacturing to advance defect detection in stamped holes, but it is incremental as it focuses on a specific domain application.

The paper tackles the problem of defect detection in stamped metal sheets for auto manufacturing by introducing the Open Stamped Parts Dataset (OSPD), which includes synthetic and real images with annotations, and reports training a hole-detection model achieving a modified recall of 67.2% and precision of 94.4%.

We present the Open Stamped Parts Dataset (OSPD), featuring synthetic and real images of stamped metal sheets for auto manufacturing. The real part images, captured from 7 cameras, consist of 7,980 unlabeled images and 1,680 labeled images. In addition, we have compiled a defect dataset by overlaying synthetically generated masks on 10\% of the holes. The synthetic dataset replicates the real manufacturing environment in terms of lighting and part placement relative to the cameras. The synthetic data includes 7,980 training images, 1,680 validation images and 1,680 test images, each with bounding box and segmentation mask annotations around all holes. 10\% of the holes in the synthetic data mimic defects generated in the real image dataset. We trained a hole-detection model on the synthetic-OSPD, achieving a modified recall score of 67.2\% and a precision of 94.4\% . We anticipate researchers in auto manufacturing use OSPD to advance the state of the art in defect detection of stamped holes in the metal-sheet stamping process. The dataset is available for download at: https://tinyurl.com/hm6xatd7.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes