Wear Classification of Abrasive Flap Wheels using a Hierarchical Deep Learning Approach
arXiv cs.CV / 3/16/2026
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Key Points
- A vision-based hierarchical framework monitors wear in abrasive flap wheels, decomposing the task into state detection (new vs worn), wear type identification (rectangular, concave, convex) and flap tear detection with severity (partial vs complete deformation).
- The approach uses a transfer learning setup with EfficientNetV2 and a custom real-world dataset of flap wheel images.
- The system achieves high classification accuracies, ranging from 93.8% for flap tears to 99.3% for concave severity.
- Grad-CAM analyses are used to validate that the model attends to physically meaningful features, supporting interpretability and its potential for adaptive, wear-aware automation in flap wheel grinding.
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