WANG Jue, LU Zhenyu, ZHANG Xiaowei, et al. Skin Defect Detection Method Based on Multilevel Convolution and Shape Enhancement[J]. Aeronautical Manufacturing Technology, 2026, 69(6).
DOI:
WANG Jue, LU Zhenyu, ZHANG Xiaowei, et al. Skin Defect Detection Method Based on Multilevel Convolution and Shape Enhancement[J]. Aeronautical Manufacturing Technology, 2026, 69(6). DOI: 10.16080/j.issn1671-833x.25010131.
Skin Defect Detection Method Based on Multilevel Convolution and Shape Enhancement
To address the impact of surface defects in aircraft skin—critical structural components—on overall structural performance
this paper proposes a deep learning detection network based on the RT-DETR model
aiming to enhance the accuracy and robustness of aircraft skin defect detection. In response to the challenges posed by defects of varying scales
morphologies
and complex distributions
a series of innovative techniques were adopted for optimization. First
in the feature extraction stage
multilevel convolution blocks (MCB) were introduced. Through multi-layer convolution operations
the discriminative power of features at different scales was strengthened
effectively capturing details at various levels. Second
in the feature fusion stage
a multiscale feature enhancement (MSFE) module was employed
using multi-size depthwise convolution kernels to build contextual information
thereby improving the network’s robustness and adaptability to multiscale defect features. Finally
in the regression stage
a shape-aware (Shape-IoU) optimization module was introduced
which optimizes the matching between bounding boxes and defect contours
significantly improving detection accuracy. Experimental results show that the proposed network achieved an mAP@0.5 of 94.8% on the Aircraft dataset
representing a 12.7% improvement over the original RT-DETR model. Furthermore
on the NEU-DET test set
the model attained an mAP@0.5 of 92.5%. These results validate the effectiveness of the model in improving both the precision and generalization capability of aircraft skin defect detection.