Affiliation:
1. School of Aeronautics and Astronautics, Sichuan University, Chengdu 610065, China
Abstract
The introduction of various deep neural network architectures has greatly advanced aircraft pose estimation using high-resolution images. However, realistic airport surface monitors typically take low-resolution (LR) images, and the results of the aircraft pose estimation are far from being accurate enough to be considered acceptable because of long-range capture. To fill this gap, we propose a brand-new, end-to-end low-resolution aircraft pose estimate network (LRF-SRNet) to address the problem of estimating the pose of poor-quality airport surface surveillance aircraft images. The method successfully combines the pose estimation method with the super-resolution (SR) technique. Specifically, to reconstruct high-resolution aircraft images, a super-resolution network (SRNet) is created. In addition, an essential component termed the large receptive field block (LRF block) helps estimate the aircraft’s pose. By broadening the neural network’s receptive field, it enables the perception of the aircraft’s structure. Experimental results demonstrate that, on the airport surface surveillance dataset, our method performs significantly better than the most widely used baseline methods, with AP exceeding Baseline and HRNet by 3.1% and 4.5%.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference44 articles.
1. Using intelligent digital cameras to monitor aerodrome surface traffic;Pavlidou;IEEE Intell. Syst.,2005
2. A Novel Rescheduling Algorithm for the Airline Recovery with Flight Priorities and Airport Capacity Constraints;Ji;Asia-Pac. J. Oper. Res.,2021
3. Yan, Z., Yang, H., Li, F., and Lin, Y. (2021). A Deep Learning Approach for Short-Term Airport Traffic Flow Prediction. Aerospace, 9.
4. Validation of global airport spatial locations from open databases using deep learning for runway detection;Ji;IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens.,2020
5. Digital twin development for airport management;Oliveira;J. Airpt. Manag.,2020
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