A Deep Learning Framework for Real-Time Bird Detection and Its Implications for Reducing Bird Strike Incidents

被引:2
作者
Alzadjail, Najiba Said Hamed [1 ]
Balasubaramainan, Sundaravadivazhagan [1 ]
Savarimuthu, Charles [1 ]
Rances, Emanuel O. [1 ]
机构
[1] Univ Technol & Appl Sci AL Mussanah, Coll Comp & Informat Sci, POB 191, Muladdah, Oman
关键词
deep learning; bird strike; CNN; UAV; R-FCN; YOLO;
D O I
10.3390/s24175455
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Bird strikes are a substantial aviation safety issue that can result in serious harm to aircraft components and even passenger deaths. In response to this increased tendency, the implementation of new and more efficient detection and prevention technologies becomes urgent. The paper presents a novel deep learning model which is developed to detect and alleviate bird strike issues in airport conditions boosting aircraft safety. Based on an extensive database of bird images having different species and flight patterns, the research adopts sophisticated image augmentation techniques which generate multiple scenarios of aircraft operation ensuring that the model is robust under different conditions. The methodology evolved around the building of a spatiotemporal convolutional neural network which employs spatial attention structures together with dynamic temporal processing to precisely recognize flying birds. One of the most important features of this research is the architecture of its dual-focus model which consists of two components, the attention-based temporal analysis network and the convolutional neural network with spatial awareness. The model's architecture can identify specific features nested in a crowded and shifting backdrop, thereby lowering false positives and improving detection accuracy. The mechanisms of attention of this model itself enhance the model's focus by identifying vital features of bird flight patterns that are crucial. The results are that the proposed model achieves better performance in terms of accuracy and real time responses than the existing bird detection systems. The ablation study demonstrates the indispensable roles of each component, confirming their synergistic effect on improving detection performance. The research substantiates the model's applicability as a part of airport bird strike surveillance system, providing an alternative to the prevention strategy. This work benefits from the unique deep learning feature application, which leads to a large-scale and reliable tool for dealing with the bird strike problem.
引用
收藏
页数:17
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