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Vision-based Unmanned Aerial Vehicle detection and tracking for sense and avoid systems

机译:基于视觉的无人飞行器检测和跟踪,以感知和避开系统

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We propose an approach for on-line detection of small Unmanned Aerial Vehicles (UAVs) and estimation of their relative positions and velocities in the 3D environment from a single moving camera in the context of sense and avoid systems. This problem is challenging both from a detection point of view, as there are no markers on the targets available, and from a tracking perspective, due to misdetection and false positives. Furthermore, the methods need to be computationally light, despite the complexity of computer vision algorithms, to be used on UAVs with limited payload. To address these issues we propose a multi-staged framework that incorporates fast object detection using an AdaBoost-based approach, coupled with an on-line visual-based tracking algorithm and a recent sensor fusion and state estimation method. Our framework allows for achieving real-time performance with accurate object detection and tracking without any need of markers and customized, high-performing hardware resources.
机译:我们提出了一种在线检测小型无人飞行器(UAV)并在感知和避免系统的情况下从单个移动摄像机估计3D环境中它们的相对位置和速度的方法。从检测的角度来看(由于在目标上没有可用的标记),以及从跟踪的角度来看,这个问题都具有挑战性,这是由于检测错误和误报所致。此外,尽管计算机视觉算法很复杂,但这些方法仍需要轻量级的计算才能用于有效载荷有限的无人机上。为了解决这些问题,我们提出了一个多阶段框架,该框架结合了使用基于AdaBoost的方法进行快速目标检测,结合基于视觉的在线跟踪算法以及最新的传感器融合和状态估计方法的能力。我们的框架允许通过准确的对象检测和跟踪来实现实时性能,而无需标记和定制的高性能硬件资源。

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