Author:
Risnumawan Anhar,Perdana Muhammad Ilham,Alif Habib Hidayatulloh ,A. Khoirul Rizal ,Indra Adji Sulistijono ,Achmad Basuki ,Rokhmat Febrianto
Abstract
Searching the accident site of a missing airplane is the primary step taken by the search and rescue team before rescuing the victims. However, due to the vast exploration area, lack of technology, no access road, and rough terrain make the search process nontrivial and thus causing much delay in handling the victims. Therefore, this paper aims to develop an automatic wrecked airplane detection system using visual information taken from aerial images such as from a camera. A new deep network is proposed to distinguish robustly the wrecked airplane that has high pose, scale, color variation, and high deformable object. The network leverages the last layers to capture more abstract and semantics information for robust wrecked airplane detection. The network is intertwined by adding more extra layers connected at the end of the layers. To reduce missing detection which is crucial for wrecked airplane detection, an image is then composed into five patches going feed-forwarded to the net in a convolutional manner. Experiments show very well that the proposed method successfully reaches AP=91.87%, and we believe it could bring many benefits for the search and rescue team for accelerating the searching of wrecked airplanes and thus reducing the number of victims.
Publisher
EMITTER International Journal of Engineering Technology
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Image Augmentation For Aircraft Parts Detection Using Mask R-CNN;2024 International Conference on Smart Computing, IoT and Machine Learning (SIML);2024-06-06
2. Depth Maps and 3D Batik: A Methodological Exploration of Structure from Motion in Fashion Technology;2023 IEEE 7th International Conference on Information Technology, Information Systems and Electrical Engineering (ICITISEE);2023-11-29
3. Comparison of RSNET model with existing models for potato leaf disease detection;Biocatalysis and Agricultural Biotechnology;2023-07
4. Performance evaluation of plant leaf disease detection using deep learning models;Archives of Phytopathology and Plant Protection;2023-02-07
5. Aerial Drone Mapping and Trajectories Generator for Agricultural Ground Robots;2020 International Symposium on Community-centric Systems (CcS);2020-09-23