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FIESTA: Fast Incremental Euclidean Distance Fields for Online Motion Planning of Aerial Robots

机译:嘉年华:空中机器人在线运动规划的快速增量欧几里德距离场

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摘要

Euclidean Signed Distance Field (ESDF) is useful for online motion planning of aerial robots since it can easily query the distance and gradient information against obstacles. Fast incrementally built ESDF map is the bottleneck for conducting real-time motion planning. In this paper, we investigate this problem and propose a mapping system called FIESTA to build global ESDF map incrementally. By introducing two independent updating queues for inserting and deleting obstacles separately, and using Indexing Data Structures and Doubly Linked Lists for map maintenance, our algorithm updates as few as possible nodes using a BFS framework. Our ESDF map has high computational performance and produces near-optimal results. We show our method outperforms other up-to-date methods in term of performance and accuracy by both theory and experiments. We integrate FIESTA into a completed quadrotor system and validate it by both simulation and onboard experiments. We release our method as open-source software for the community.
机译:欧几里德签名距离场(ESDF)可用于航空机器人的在线运动规划,因为它可以轻松地查询距离障碍物的距离和梯度信息。快速逐步构建的ESDF地图是进行实时运动规划的瓶颈。在本文中,我们调查了这个问题,并提出了一个名为Fiesta的映射系统,以逐步构建全球ESDF地图。通过将两个独立的更新队列分别引入插入和删除障碍物,并使用索引数据结构和双链接列表进行地图维护,我们的算法使用BFS框架的可能节点少量更新。我们的ESDF地图具有高的计算性能,并产生近乎最佳结果。我们通过理论和实验表明我们的方法优于性能和准确性的其他最新方法。我们将Fiesta集成到完整的四轮机系统中,并通过模拟和板载实验进行验证。我们将我们的方法发布为社区的开源软件。

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