飞机
变形(气象学)
翼
航空学
航空航天工程
计算机科学
计算机视觉
人工智能
工程类
物理
气象学
作者
Guangkun Feng,Fulin Liu,Mingkun Liu,Zhenzhong Wei
标识
DOI:10.1109/tim.2024.3366272
摘要
Attitude measurement is significant for airplane flight tests, especially in the landing phase. Among various technologies, off-board vision-based monocular measurement methods are flexible, non-intrusive, and self-contained. Previously employed model-based attitude measurement methods assume airplanes are rigid objects with fixed 3D models. However, airplane wing deformation caused by aerodynamic loads is neglected, which decreases the pose accuracy. To address it, this article proposes a novel method of estimating wing deformations and measuring airplane attitudes. It begins with building a polynomial wing deformation model using real wing data. Then, the wing deformation is reconstructed by leveraging dense correspondences between the input RGB image and the rendered image corresponding to a coarse pose estimation. After rectifying the wing deformation, a two-stage pose refinement strategy is proposed to refine the coarse pose. To evaluate our method, we propose a new airplane image dataset in which wing deformations are manually annotated. Experiments on this dataset demonstrate the outperformance of our method. Furthermore, results on airplane flight tests illustrate that our method can run on images of resolution 1920×1080 with a speed of 21 Hz and an accuracy of 0.4° for the three attitude angles.
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