Affiliation:
1. Air Traffic Management College Civil Aviation Flight University of China Guanghan Sichuan China
2. State Grid General Aviation Co., Ltd. Beijing China
Abstract
AbstractCurrent research on apron conflict detection is often limited to the interaction between the aircraft as a whole and other objects, making it difficult to accomplish targeted identification of vulnerable and high‐cost aircraft components. However, the implementation of detailed aircraft identification is of great significance to enhance the safety of airport surface operations. Based on the excellent performance of High‐Resolution Network (HRNet) in keypoint detection, a lightweight end‐to‐end keypoint detection network, namely Squeeze and Excitation High‐Resolution Network (SEHRNet), is proposed in this paper to solve the problems of HRNet's slower computation and more redundancy. First, the errors arising from coordinate transformations in the coding and decoding process are solved by an improved feature map coding and decoding process. Second, replace the BasicBlock in HRNet with the Depthwise separable convolutions based on the Squeeze‐and‐Excitation Networks, which drastically cuts the computational cost of the network. Third, the improved Bottleneck module is used to further enhance the capability of feature extraction. Experimental results prove that, based on the aircraft keypoint detection dataset, the SEHRNet proposed in this paper shows stronger applicability compared to the current mainstream networks. Compared with the original HRNet, the improved network has higher accuracy, faster speed, and lighter model for aircraft keypoint detection.
Funder
Fundamental Research Funds for the Central Universities
Publisher
Institution of Engineering and Technology (IET)
Reference51 articles.
1. Wang Y. Zhe S. Liu Y. Tang P.(eds.):Predicting Collisions between Aircraft through Spatiotemporal Data‐Driven Simulation of Airport Ground Operations. In: AIAA Aviation 2019 Forum(2019)
2. Huang S.P.:Human reliability analysis in aviation maintenance by a Bayesian network approach. In: ICOSSAR2013 (2013)
3. Dalal N. Triggs B. (eds.):Histograms of oriented gradients for human detection. In: 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05) IEEE(2005)
4. Zhu Q. Yeh M.‐C. Cheng K.‐T. Avidan S.(eds.):Fast human detection using a cascade of histograms of oriented gradients. In 2006 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'06) IEEE(2006)
5. Lowe D.G.(ed.):Object recognition from local scale‐invariant features. In: Proceedings of the Seventh IEEE International Conference on Computer Vision IEEE(1999)