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Topic

 Machine Learning, Decision Making


Abstract

Convolutional Neural Networks combined with autonomous drones are increasingly seen as enablers of partially automating the aircraft maintenance visual inspection process. Such an innovative concept can have a significant impact on aircraft operations. Though supporting aircraft maintenance engineers detect and classify a wide range of defects, the time spent on inspection can significantly be reduced. Examples of defects that can be automatically detected include aircraft dents, paint defects, cracks and holes, and lightning strike damage. Additionally, this concept could also increase the accuracy of damage detection and reduce the number of aircraft inspection incidents related to human factors like fatigue and time pressure. In our previous work, we have applied a recent Convolutional Neural Network architecture known by MASK R-CNN to detect aircraft dents. MASK-RCNN was chosen because it enables the detection of multiple objects in an image while simultaneously generating a segmentation mask for each instance. The previously obtained 


Bibtex info
@article{dogru_using_2020,
    title = {Using {Convolutional} {Neural} {Networks} to {Automate} {Aircraft} {Maintenance} {Visual} {Inspection}},
    volume = {7},
    issn = {2226-4310},
    url = {https://www.mdpi.com/2226-4310/7/12/171},
    doi = {10.3390/aerospace7120171},
    number = {12},
    journal = {Aerospace},
    author = {Doğru, Anil and Bouarfa, Soufiane and Arizar, Ridwan and Aydoğan, Reyhan},
    year = {2020},
}

Authors
Anil Doğru, Soufiane Bouarfa, Ridwan Arizar and Reyhan Aydoğan

Keywords - tags
aircraft maintenance inspection, anomaly detection, defect inspection, convolutional neural networks, Mask R-CNN. generative adversarial networks, image augmentation, prediction

Publication type
Journal Article

Year
2020