Yıl: 2022 Cilt: 7 Sayı: 2 Sayfa Aralığı: 154 - 160 Metin Dili: İngilizce DOI: 10.26833/ijeg.937061 İndeks Tarihi: 31-08-2022

Divide and conquer object detection (DACOD) method for runway detection in remote sensing images

Öz:
In recent years, parallel to the developments in satellite technology, obtaining and processing remote sensing images has become quite common. While airports are the first points to be targeted by enemy forces in times of war, they are very critical points in times of peace due to their significance for transportation, trade, and economy networks. The runways are the most distinctive feature of airports. There are many studies on detecting the runways in remote sensing images (RSIs). However, existing methods for detecting the runway objects that have an excessive width in high-resolution (4137 x 4552 pixels and above) RSIs may be insufficient. In this study, a Divide and Conquer Object Detection (DACOD) method is proposed for the runway objects that have an excessive width in high-resolution RSIs. In the proposed method, images are divided into images of 1024 x 1024 pixels, and the runway objects in these images are detected as oriented. Then, the detection results are merged by using the angles and the final runway detection results are obtained. The experimental results demonstrate that the proposed model yields good results (%81.5 mAP). This is an 11% mAP increase when compared to the best results in The State of The Art (SOTA) object detection models using the same dataset.
Anahtar Kelime: Remote sensing Runway detection Convolutional neural networks (CNN) Oriented object detection

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA KÖREZ A (2022). Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. , 154 - 160. 10.26833/ijeg.937061
Chicago KÖREZ Atakan Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. (2022): 154 - 160. 10.26833/ijeg.937061
MLA KÖREZ Atakan Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. , 2022, ss.154 - 160. 10.26833/ijeg.937061
AMA KÖREZ A Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. . 2022; 154 - 160. 10.26833/ijeg.937061
Vancouver KÖREZ A Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. . 2022; 154 - 160. 10.26833/ijeg.937061
IEEE KÖREZ A "Divide and conquer object detection (DACOD) method for runway detection in remote sensing images." , ss.154 - 160, 2022. 10.26833/ijeg.937061
ISNAD KÖREZ, Atakan. "Divide and conquer object detection (DACOD) method for runway detection in remote sensing images". (2022), 154-160. https://doi.org/10.26833/ijeg.937061
APA KÖREZ A (2022). Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. International Journal of Engineering and Geosciences, 7(2), 154 - 160. 10.26833/ijeg.937061
Chicago KÖREZ Atakan Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. International Journal of Engineering and Geosciences 7, no.2 (2022): 154 - 160. 10.26833/ijeg.937061
MLA KÖREZ Atakan Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. International Journal of Engineering and Geosciences, vol.7, no.2, 2022, ss.154 - 160. 10.26833/ijeg.937061
AMA KÖREZ A Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. International Journal of Engineering and Geosciences. 2022; 7(2): 154 - 160. 10.26833/ijeg.937061
Vancouver KÖREZ A Divide and conquer object detection (DACOD) method for runway detection in remote sensing images. International Journal of Engineering and Geosciences. 2022; 7(2): 154 - 160. 10.26833/ijeg.937061
IEEE KÖREZ A "Divide and conquer object detection (DACOD) method for runway detection in remote sensing images." International Journal of Engineering and Geosciences, 7, ss.154 - 160, 2022. 10.26833/ijeg.937061
ISNAD KÖREZ, Atakan. "Divide and conquer object detection (DACOD) method for runway detection in remote sensing images". International Journal of Engineering and Geosciences 7/2 (2022), 154-160. https://doi.org/10.26833/ijeg.937061