CHENG Yu, HAN Wei, MA Linsen, et al. Augmented Reality Intelligent Inspection of Civil Aviation Aircraft Based on Deep Learning[J]. Aeronautical Manufacturing Technology, 2025, (23/24).
CHENG Yu, HAN Wei, MA Linsen, et al. Augmented Reality Intelligent Inspection of Civil Aviation Aircraft Based on Deep Learning[J]. Aeronautical Manufacturing Technology, 2025, (23/24). DOI: 10.16080/j.issn1671-833x.2025.23/24.034.
In order to reduce errors and omissions in manual inspections of civil aviation aircraft before takeoff
enhance inspection quality and efficiency while reducing labor intensity
this paper proposes a deep learning-based augmented reality intelligent inspection method for civil aviation aircraft. Firstly
a data augmentation method based on pre augmentation evaluation was designed
which achieved large-scale automatic augmentation of a small number of civil aviation aircraft damage defect image sample datasets. Subsequently
focusing on the visual characteristics of damage defects
and improved YOLOv8 network is proposed to train the augmented dataset for damage defect detection
forming a damage and defect detection model. Finally
this method is integrated into the augmented reality recognition and display process
utilizing augmented reality glasses to achieve intelligent identification of aircraft damage and defects and augmented reality display and maintenance guidance for the identification results. The proposed method is validated on real-world scenarios
showing effective identification of common defects with a detection rate increased from 89.1% to 95.7%
and a maximum reduction in inspection time of 27.0%
thereby effectively assisting inspection personal in achieving intelligent inspection of civil aviation aircraft.