AWBN-YOLO: A Surface Defect Detection Method for Aero-Engine Blades in Sample-Limited Scenarios

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Abstract

In the production process of aero-engine blades (AEBs), surface defect detection is essential. However, data scarcity and class imbalance in practical industrial scenarios make deep learning-based defect identification of AEBs challenging. In this article, we propose AWBN-YOLO, an enhanced YOLOv10n-based framework to address these challenges. Specifically, we design an Adaptive Sample Augmentation Method (ASAM) to synthesize photorealistic defect samples by adaptively aligning defect geometries with blade contours and optimizing background consistency. We also propose a Feature-driven Wavelet Downsampling (FWD) module to preserve critical spatial-frequency details through adaptive wavelet basis selection, enhancing sensitivity to fine-grained defects. Furthmore, we introduce BiFPN-Concat and Normalized Wasserstein Distance Loss (NWD-Loss) to optimize multi-scale feature fusion and small-defect localization. Experiments on the AeBAD-SL dataset, a sample-imbalanced benchmark for AEBs have proven that AWBN-YOLO can achieve state-of-the-art performance with 82.2% precision, 71.9% recall, and 71.7% mAP50, surpassing the baseline YOLOv10n by 2.8%, 1.2%, and 2.6%, respectively. AWBN-YOLO achieves superior detection accuracy while maintaining real-time performance (140 FPS), offering a robust solution for industrial quality inspection under practical constraints.

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