无人机
人工智能
计算机科学
能见度
恒虚警率
警报
假警报
机器学习
职位(财务)
点(几何)
假阳性率
深度学习
计算机视觉
地理
工程类
数学
遗传学
财务
航空航天工程
气象学
经济
生物
几何学
作者
Angelo Coluccia,Alessio Fascista,Arne Schumann,Lars Sommer,Anastasios Dimou,Dimitrios Zarpalas,Miguel Méndez,David de la Iglesia,Iago González,J. P. Mercier,Guillaume Gagné,Arka Mitra,Shobha Rajashekar
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2021-04-16
卷期号:21 (8): 2824-2824
被引量:103
摘要
Adopting effective techniques to automatically detect and identify small drones is a very compelling need for a number of different stakeholders in both the public and private sectors. This work presents three different original approaches that competed in a grand challenge on the “Drone vs. Bird” detection problem. The goal is to detect one or more drones appearing at some time point in video sequences where birds and other distractor objects may be also present, together with motion in background or foreground. Algorithms should raise an alarm and provide a position estimate only when a drone is present, while not issuing alarms on birds, nor being confused by the rest of the scene. In particular, three original approaches based on different deep learning strategies are proposed and compared on a real-world dataset provided by a consortium of universities and research centers, under the 2020 edition of the Drone vs. Bird Detection Challenge. Results show that there is a range in difficulty among different test sequences, depending on the size and the shape visibility of the drone in the sequence, while sequences recorded by a moving camera and very distant drones are the most challenging ones. The performance comparison reveals that the different approaches perform somewhat complementary, in terms of correct detection rate, false alarm rate, and average precision.
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