基于航拍图像的无人机小目标检测算法性能比较

Hao Xu, Yuan Cao, Qian Lu, Qiang Yang
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引用次数: 3

摘要

现代社会的交通管制是城市管理的一部分。在装有摄像头的无人驾驶飞行器(uav)的帮助下,研究人员可以在适当的高度捕捉空中(鸟瞰图)图像。航拍图像的视角使物体的外观蹲下,尽管航拍图像可以通过更宽的视角提供更多关于环境的上下文信息,但物体实例可能会被错误地检测到。这一事实减少了可以提供给高维网络的航空图像,从而增加了计算成本,以防止属于小物体的像素减少。为了比较模型对小目标和航拍图像的性能,本研究在AU-AIR数据集上训练和测试了YOLOv4和YOLOv3两种目标检测器,并利用基于yolo4模型的参数化方法对小目标进行检测。最后给出了关键的数值结果和观测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Comparison of Small Object Detection Algorithms of UAV based Aerial Images
Traffic controls in modern society are part of urban management. With the assistance of unmanned aerial vehicles (UAVs) equipped with mounted cameras, researchers could capture aerial (bird-view) images from appropriate altitude. The perspective in aerial images makes appearances of objects squat, although aerial images can supply more contextual information about the environment by a broader view angle, the object instances may be detected by mistake. This fact diminishes the aerial images that can be fed to a network with higher dimensions that increases the computational cost to prevent the diminishing of pixels belonging to small objects. To compare model performance on small objects with aerial images, this study trains and tests two object detectors, i.e. YOLOv4 and YOLOv3, on the AU-AIR dataset, and exploited the parameterization of YOLO based models for small object detection. Finally, the key numerical results and observations are presented.
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