论文标题
Mobdrone:一个针对人类过失救援的无人机视频数据集
MOBDrone: a Drone Video Dataset for Man OverBoard Rescue
论文作者
论文摘要
配备了相机的现代无人飞行器(UAV)可以在加快跌落船的人的身份识别和救助方面发挥至关重要的作用。为此,可以利用人工智能技术来自动理解从无人机中获取的视觉数据。但是,在航空影像中检测海上的人主要是由于缺乏针对此任务的培训和测试探测器的专门注释的数据集。为了填补这一空白,我们介绍并公开发布了Mobdrone Benchmark,这是在海洋环境中在多种条件下(例如不同的高度,摄像头拍摄角度和照明)中收集超过125K的无人机视图图像。我们手动注释了超过180k的对象,其中约有113k人的底线,精确地将它们定位为边界盒。此外,我们对Mobdrone数据上的几个最先进的对象探测器进行了彻底的性能分析,作为进一步研究的基准。
Modern Unmanned Aerial Vehicles (UAV) equipped with cameras can play an essential role in speeding up the identification and rescue of people who have fallen overboard, i.e., man overboard (MOB). To this end, Artificial Intelligence techniques can be leveraged for the automatic understanding of visual data acquired from drones. However, detecting people at sea in aerial imagery is challenging primarily due to the lack of specialized annotated datasets for training and testing detectors for this task. To fill this gap, we introduce and publicly release the MOBDrone benchmark, a collection of more than 125K drone-view images in a marine environment under several conditions, such as different altitudes, camera shooting angles, and illumination. We manually annotated more than 180K objects, of which about 113K man overboard, precisely localizing them with bounding boxes. Moreover, we conduct a thorough performance analysis of several state-of-the-art object detectors on the MOBDrone data, serving as baselines for further research.