摘要
During the CNC machining, the blades exhibit various surface defects, including diverse morphologies and dimensions. Deep learning-based intelligent detection algorithms for the blade production line aim to improve computational efficiency and accuracy while minimizing model dimensions. This study proposes an enhanced blade detection method predicated upon a real-time detection transformer (RT-DETR) to detect blade surface defects precisely and efficiently in the blade production line. A dataset of blade surface defects in the blade machining process is first constructed, focusing on four surface defect types: gash, scratch, bruise, and pockmark. Secondly, the backbone network segment is substituted with an improved and more lightweight ResNet18 to optimize defect detection efficiency. The original feature fusion approach in RT-DETR is replaced by a Hierarchical Scale-based Feature Pyramid Network (HS-FPN) to enhance the model’s capability of detecting blade surface defects across various scales. The Inner-GIoU loss function is employed in RT-DETR to expedite model convergence and improve the accuracy of detecting minor surface defects. The results illustrate that the approach developed in this study raises the detection accuracy (mAP@0.5) by 3.5% and reduces the computational time required for detecting a single blade by 1.16 s compared to the traditional RT-DETR. This algorithm exhibits a relatively faster detection speed and higher accuracy in the automated real-time detection of blade surface defects.
| 源语言 | 英语 |
|---|---|
| 页(从-至) | 313-325 |
| 页数 | 13 |
| 期刊 | Journal of Intelligent Manufacturing |
| 卷 | 37 |
| 期 | 1 |
| DOI | |
| 出版状态 | 已出版 - 1月 2026 |
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