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A dynamic sensor placement algorithm for dense sampling

机译:用于密集采样的动态传感器放置算法

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A robot that can drive autonomously, actively seeking more information about the environment as it attempts to infer it, has significant value in many application areas. Range scanners and depth sensors are one of the most popular sensors used in mobile robotics to accomplish several higher level tasks such as local planning, obstacle avoidance, and mapping and localization among others. For any application, it has been observed with laser range-scanners and depth sensors, that the sampling density, i.e., the number of range measurements per unit length of the scanned contour, can vary greatly even within a single scan measurement. The number of samples and their distribution are important factors, for example, when estimating the alignment between two range scans obtained from two different positions. In this paper, an on-line placement algorithm is proposed that computes where the robot must move next so that it is able to sample the environment uniformly and densely. The algorithm guarantees that a minimum number of measurements per unit length of the observed space is obtained, i.e. a high spatial measurement density. At any given time instant the robot computes a Next-Best-View relative to its current position while satisfying a locally-defined constraint function based on the sampling density of points. Two variants of this algorithm, suitable for different practical applications are demonstrated with experiments on real robots in interesting scenarios.
机译:能够自动驾驶,在尝试推断环境时主动寻求有关环境的更多信息的机器人在许多应用领域中都具有重要的价值。范围扫描仪和深度传感器是移动机器人中最常用的传感器之一,可以完成一些更高级别的任务,例如本地计划,避障,地图绘制和定位等。对于任何应用,已经通过激光测距仪和深度传感器观察到,即使是单次扫描测量,采样密度,即每单位扫描轮廓长度的测距次数也可以有很大的变化。例如,当估计从两个不同位置获得的两次范围扫描之间的对齐时,样本的数量及其分布是重要的因素。在本文中,提出了一种在线放置算法,该算法可以计算机器人下一步必须移动的位置,以便能够均匀且密集地采样环境。该算法保证了在所观察空间的每单位长度上获得最少数量的测量,即高的空间测量密度。在任何给定的时间点,机器人都将根据其当前位置计算一个“最佳视图”,同时满足基于点的采样密度的局部定义的约束函数。在有趣的场景中,通过在真实机器人上进行的实验演示了该算法的两种变体,它们适用于不同的实际应用。

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