论文标题

基于动态时时间摄像机融合的非合件环境中无人机的强大自主降落

Robust Autonomous Landing of UAV in Non-Cooperative Environments based on Dynamic Time Camera-LiDAR Fusion

论文作者

Chen, Lyujie, Yuan, Xiaming, Xiao, Yao, Zhang, Yiding, Zhu, Jihong

论文摘要

在非合作环境中选择安全的着陆点是迈向无人机自治的关键步骤。但是,现有方法具有较差的概括能力和鲁棒性的共同问题。它们在未知环境中的性能显着降低,并且无法进行自我检测和纠正。在本文中,我们构建了一个带有低成本激光镜头和双眼摄像机的无人机系统,通过检测平坦,安全的地面区域来实现在非合作环境中的自主降落。利用激光雷达的非重复扫描和高FOV覆盖特性,我们提出了动态的时间深度完成算法。结合深度图的提议的自评估方法,我们的模型可以在推理阶段动态选择激光雷达的累积时间,以确保准确的预测结果。基于深度图,得出了高级地形信息,例如坡度,粗糙度和安全区域的大小。我们已经在各种熟悉或完全未知的环境中进行了广泛的自主着陆实验,验证我们的模型可以适应地平衡准确性和速度,而无人机可以强烈地选择一个安全的着陆点。

Selecting safe landing sites in non-cooperative environments is a key step towards the full autonomy of UAVs. However, the existing methods have the common problems of poor generalization ability and robustness. Their performance in unknown environments is significantly degraded and the error cannot be self-detected and corrected. In this paper, we construct a UAV system equipped with low-cost LiDAR and binocular cameras to realize autonomous landing in non-cooperative environments by detecting the flat and safe ground area. Taking advantage of the non-repetitive scanning and high FOV coverage characteristics of LiDAR, we come up with a dynamic time depth completion algorithm. In conjunction with the proposed self-evaluation method of the depth map, our model can dynamically select the LiDAR accumulation time at the inference phase to ensure an accurate prediction result. Based on the depth map, the high-level terrain information such as slope, roughness, and the size of the safe area are derived. We have conducted extensive autonomous landing experiments in a variety of familiar or completely unknown environments, verifying that our model can adaptively balance the accuracy and speed, and the UAV can robustly select a safe landing site.

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