论文标题

Marsim:基于LIDAR的无人机的轻量级现实模拟器

MARSIM: A light-weight point-realistic simulator for LiDAR-based UAVs

论文作者

Kong, Fanze, Liu, Xiyuan, Tang, Benxu, Lin, Jiarong, Ren, Yunfan, Cai, Yixi, Zhu, Fangcheng, Chen, Nan, Zhang, Fu

论文摘要

低成本,小型形状和轻质固态激光雷达传感器的出现通过提高导航安全和计算效率,为自动无人驾驶汽车(UAV)带来了新的机会。然而,基于激光雷达的无人机的成功发展必须依靠广泛的模拟。由于难以获得的密集网格地图的要求,现有的模拟器几乎无法对现实世界环境进行模拟。在本文中,我们为基于激光雷达的无人机的现实世界场景开发了一个现实的模拟器。关键思想是基础渲染方法,在其中,我们直接从点云映射构造深度图像并插入它以获得逼真的LIDAR点测量值。我们开发的模拟器能够在轻量级计算平台上运行,并支持具有不同分辨率和扫描模式,动态障碍和多UAV系统的激光雷达的模拟。在ROS框架中开发的模拟器可以轻松地与自主机器人的其他关键模块进行通信,例如感知,状态估计,计划和控制。最后,模拟器提供了各种现实环境的10个高分辨率点云图,包括不同密度,历史建筑,办公室,停车场和各种复杂室内环境的森林。这些现实的地图为自动无人机提供了多种测试方案。评估结果表明,开发的模拟器在针对凉亭的时间和记忆消耗方面取得了出色的性能,并且在现实世界环境中,模拟的无人机飞行高度匹配了实际的飞行。我们认为,这种点现实和轻巧的模拟器对于弥合无人机模拟和实验之间的差距至关重要,并且将来将显着促进基于激光雷达的自主无人机的研究。

The emergence of low-cost, small form factor and light-weight solid-state LiDAR sensors have brought new opportunities for autonomous unmanned aerial vehicles (UAVs) by advancing navigation safety and computation efficiency. Yet the successful developments of LiDAR-based UAVs must rely on extensive simulations. Existing simulators can hardly perform simulations of real-world environments due to the requirements of dense mesh maps that are difficult to obtain. In this paper, we develop a point-realistic simulator of real-world scenes for LiDAR-based UAVs. The key idea is the underlying point rendering method, where we construct a depth image directly from the point cloud map and interpolate it to obtain realistic LiDAR point measurements. Our developed simulator is able to run on a light-weight computing platform and supports the simulation of LiDARs with different resolution and scanning patterns, dynamic obstacles, and multi-UAV systems. Developed in the ROS framework, the simulator can easily communicate with other key modules of an autonomous robot, such as perception, state estimation, planning, and control. Finally, the simulator provides 10 high-resolution point cloud maps of various real-world environments, including forests of different densities, historic building, office, parking garage, and various complex indoor environments. These realistic maps provide diverse testing scenarios for an autonomous UAV. Evaluation results show that the developed simulator achieves superior performance in terms of time and memory consumption against Gazebo and that the simulated UAV flights highly match the actual one in real-world environments. We believe such a point-realistic and light-weight simulator is crucial to bridge the gap between UAV simulation and experiments and will significantly facilitate the research of LiDAR-based autonomous UAVs in the future.

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