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Reactive Collision Avoidance Using Real-Time Local Gaussian Mixture Model Maps

机译:使用实时局部高斯混合模型图的反应避免碰撞

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In unknown, cluttered environments, robots require online real-time mapping and collision checking in order to navigate robustly. Discrete map representations are inefficient for collision checking as they are expensive in terms of memory and computation. This paper takes a probabilistic approach to local mapping by representing the environment as a Gaussian Mixture Model (GMM) and leverages its geometric properties to enable efficient collision checking given a time-parameterized trajectory. In contrast to current discretization-based methods, a GMM preserves geometric coverage of the environment without losing representation accuracy with varying map resolutions. We introduce a novel GMM local mapping algorithm that can be used with a single depth camera processed on a single CPU, and provide algorithms for collision avoidance given arbitrary trajectory representations. Finally, we provide experimentation results demonstrating safety, efficiency, and data coverage for real-time collision avoidance with a quadrotor navigating in a cluttered environment.
机译:在未知,混乱的环境中,机器人需要在线实时映射和碰撞检查,才能进行稳健的导航。离散映射表示形式对于冲突检查效率不高,因为它们在存储和计算方面很昂贵。本文通过将环境表示为高斯混合模型(GMM),采用一种概率方法进行局部映射,并利用其几何特性在给定时间参数化轨迹的情况下进行有效的碰撞检查。与当前的基于离散化的方法相比,GMM保留了环境的几何覆盖范围,而不会因地图分辨率的变化而失去表示精度。我们介绍了一种新颖的GMM局部映射算法,该算法可与在单个CPU上处理的单个深度相机配合使用,并提供在给定任意轨迹表示的情况下避免碰撞的算法。最后,我们提供的实验结果证明了在杂乱环境中导航的四旋翼飞行器实时避撞的安全性,效率和数据覆盖范围。

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