Rapid detection and social media supervision of runway incursion based on deep learning Online publication date: Wed, 13-Jun-2018
by Chengtao Cai; Kejun Wu; Yongjie Yan
International Journal of Innovative Computing and Applications (IJICA), Vol. 9, No. 2, 2018
Abstract: In order to solve the problem of runway incursion, which is a serious threat to the safety of the aviation industry, we analyse social media data which shows people's concern about safety of the aviation industry, we analyse social media data which shows people's concern about airport runway incursion. We take the target of aircrafts and vehicles on the runway as the research objects, and put forward the airport target detection method based on optimised YOLO framework. The simulation experiment is carried out by constructing the airport simulation environment. We study the airport target detection in single target, multi-target and extreme environment target, and focus on the influence of the overlooking angle of the monitoring system on the detection results. We selected Tiny YOLO and Faster R-CNN as the control group to demonstrate the performance of the optimised YOLO detector at speed. The experimental result shows that the airport target detection based on optimised YOLO has excellent fastness and accuracy.
Online publication date: Wed, 13-Jun-2018
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