Micro-aerial vehicles (MAVs) are becoming ubiquitous across multiple industries and application domains. Lightweight MAVs with only an onboard flight controller and a minimal sensor suite (e.g., IMU, vision, and vertical ranging sensors) have potential as mobile and easily deployable sensing platforms. When deployed from a ground robot, a key parameter is a relative localization between the ground robot and the MAV. This paper proposes a novel method for tracking MAVs in lidar point clouds. In lidar point clouds, we consider the speed and distance of the MAV to actively adapt the lidar's frame integration time and, in essence, the density and size of the point cloud to be processed. We show that this method enables more persistent and robust tracking when the speed of the MAV or its distance to the tracking sensor changes. In addition, we propose a multi-modal tracking method that relies on high-frequency scans for accurate state estimation, lower-frequency scans for robust and persistent tracking, and sub-Hz processing for trajectory and object identification. These three integration and processing modalities allow for an overall accurate and robust MAV tracking while ensuring the object being tracked meets shape and size constraints.
翻译:微型飞行器(MAVs)正在多个行业和应用领域变得无处不在。只有机载飞行控制器和最小传感器组合(如IMU、视觉和垂直测距传感器)的轻型MAV系统具有移动和易于部署的遥感平台的潜力。从地面机器人部署的关键参数是地面机器人和MAV之间的相对定位。本文提出了在利达尔点云中跟踪MAV的新方法。在利达尔点云中,我们考虑了MAV的速度和距离,以积极调整Lidar的框架整合时间,本质上是所要处理的点云的密度和大小。我们表明,当MAV的速度或距离到跟踪传感器的变化时,这种方法能够更持久和有力地跟踪。此外,我们提出了多式跟踪方法,依靠高频扫描进行准确的状态估计,为稳健和持续的跟踪进行低频扫描,为轨迹和物体识别进行子Hz处理。这三种集成和处理方法可以全面准确和稳健地跟踪,同时确保跟踪物体的形状。