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Resumen de Deep learning-based foreign object detection method for aviation runways

Zhe Wang

  • Airport runway foreign object detection systems can quickly and accurately detect and identify foreign runway objects,which is significant for ensuring airport flight safety. Because of the drawbacks shown by the algorithm, the paperproposes to combine a new system scheme based on deep learning to obtain multiple feature information for identifyingforeign objects on airport runways and improve the recognition accuracy of foreign object detection. This paper designsand constructs a dataset for accomplishing airport runway foreign object detection based on the data distribution andattribute semantics of actual airport runway foreign object scenarios and the technical features of deep learning, designsFOD detection and multi-attribute recognition networks, further design algorithms, and perform validation. The resultsshow that the deep learning technology can accomplish all tasks of the airport runway foreign object detection system,which has not only good robustness to different environments but also has practical value for multi-tasking, and thelocalization task can accurately obtain the location information of foreign objects and improve the recognition accuracyof foreign object detection. Therefore, the deep learning-based airport runway foreign object recognition system designedin this paper is effective and can improve the accuracy of foreign object recognition


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