基于自定义数据集的YOLOv4和SSD Mobilenet V2机场跑道异物碎片(FOD)检测性能分析

Muhammad Reza Fairuzi, F. Zulkifli
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引用次数: 3

摘要

印度尼西亚是一个每天空中交通繁忙的国家。因此,安全是一件非常需要注意的事情,其中之一就是跑道安全。跑道是航空活动的重要组成部分,因为飞机使用它起飞和降落。跑道上可能出现异物或FOD(外来物体碎片),对飞机造成损害,并可能导致事故。因此,我们需要一种能够实时检测异物的安防系统。一种可以做到的方法是通过使用相机使用计算机视觉技术。该方法利用人工智能(AI)技术进行FOD检测。计算机视觉已经开发了各种方法或算法,SSD和YOLO是最常用的实时检测方法,因为它们具有较高的FPS和精度性能。其中,本研究发现SSD MobileNet V2最高可达12 FPS, mAP 0.5值为86.8%,YOLOv4最高可达31 FPS, mAP 0.5值为98.73%。
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Performance Analysis of YOLOv4 and SSD Mobilenet V2 for Foreign Object Debris (FOD) Detection at Airport Runway Using Custom Dataset
Indonesia is a country that has heavy air traffic every day. Therefore, safety is a very important thing to pay attention to, one of them is the runway safety. The runway is an important component in aviation activities because aircraft use it for takeoff and landing. Foreign objects or FOD (Foreign Object Debris) could appear on the runway which can cause damage to the aircraft and may result in an accident. Therefore, we need a security system that can detect foreign objects in real-time. One approach that can be done is to use Computer Vision technology by using a camera. This method utilizes Artificial Intelligence (AI) technology for FOD detection. Various methods or algorithms have been developed for Computer Vision, SSD and YOLO are the most frequently used methods for real-time detection because of their high FPS and accuracy performance. Where in this study it was found that SSD MobileNet V2 can reach up to 12 FPS with mAP 0.5 value of 86.8% and for YOLOv4 can reach up to 31 FPS with mAP 0.5 value of 98.73%.
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