High-altitude Multi-object Detection and Tracking based on Drone Videos

Qiang Zhao, Limei Peng
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Abstract

Drone videos have more extensive shooting ranges, more angles, and no geographical limitations. Thus the object detection algorithm based on drone videos is increasingly playing a role in various fields, such as military surveillance, space remote sensing, smart city, disaster monitoring scenes, etc. Compared to low-altitude object detection and tracking (LA-ODT), high-altitude object detection and tracking (HA-ODT) are receiving increasing attention, especially in modern cities with massive high buildings, because of their higher flying h eight, w ider v iewing a ngle, a nd t he a bility t o t rack multiple f ast-moving o bjects s imultaneously. However, high-altitude aerial videos (HA-AVs) are constrained by small objects that can be measured, fewer feature points, occlusions, and light changes. Therefore, HA-AVs suffer from blurry images with fewer feature points of objects and missed detection due to occlusion, degrading the ODT accuracy. Since the accessible HA datasets are very limited, not to mention featured datasets considering angles, weather, etc., this paper directly uses drones to collect HA pictures and videos of different angles, different illuminations, and different heights for self-labeling training. Regarding this, we adopt super-resolution reconstruction to increase the data diversity and add artificial o cclusions t o e nhance t he c ollected d ata t o improve t he a ccuracy o f HA-ODT.
基于无人机视频的高空多目标检测与跟踪
无人机视频有更广泛的射击范围,更多的角度,没有地域限制。因此,基于无人机视频的目标检测算法在军事监视、空间遥感、智慧城市、灾害监控场景等各个领域发挥着越来越大的作用。相对于低空目标检测与跟踪技术(LA-ODT),高空目标检测与跟踪技术(HA-ODT)因其飞行高度更高、视场角度更大、能够同时跟踪多个快速运动目标而受到越来越多的关注,特别是在现代高楼林立的城市中。然而,高空航拍视频(ha - av)受到可以测量的小物体、较少的特征点、遮挡和光线变化的限制。因此,ha - av存在图像模糊,物体特征点较少,遮挡导致漏检等问题,降低了ODT精度。由于可访问的HA数据集非常有限,更不用说考虑角度、天气等因素的特征数据集,本文直接使用无人机采集不同角度、不同照度、不同高度的HA图片和视频进行自标注训练。为此,我们采用超分辨率重建来增加数据多样性,并加入人工结论来增强采集数据的质量,从而提高HA-ODT的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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