Autonomous Quadrotor 3D Mapping and Exploration Using Exact Occupancy Probabilities

Evan Kaufman, Kuya Takami, Zhuming Ai, Taeyoung Lee
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引用次数: 19

Abstract

This paper deals with the aerial exploration for an unknown three-dimensional environment, where Bayesian probabilistic mapping is integrated with a stochastic motion planning scheme to minimize the map uncertainties in an optimal fashion. We utilize the popular occupancy grid mapping representation, with the goal of determining occupancy probabilities of evenly-spaced grid cells in 3D with sensor fusion from multiple depth sensors with realistic sensor capabilities. The 3D exploration problem is decomposed into 3D mapping and 2D motion planning for efficient real-time implementation. This is achieved by projecting important aspects of the 3D map onto 2D maps, where a predicted level of map uncertainty, known as Shannon's entropy, provides an exploration policy that governs robotic motion. Both mapping and exploration algorithms are demonstrated with both numerical simulations and quadrotor flight experiments.
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自主四旋翼三维映射和探索使用精确的占用概率
本文研究了未知三维环境下的航空探测问题,将贝叶斯概率映射与随机运动规划相结合,以最优方式最小化地图的不确定性。我们利用流行的占用网格映射表示,目标是通过具有现实传感器功能的多个深度传感器的传感器融合来确定均匀间隔网格单元在3D中的占用概率。将三维探索问题分解为三维映射和二维运动规划,实现实时高效。这是通过将3D地图的重要方面投射到2D地图上来实现的,其中预测的地图不确定性水平(称为香农熵)提供了控制机器人运动的探索策略。通过数值模拟和四旋翼飞行实验验证了映射和勘探算法。
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