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A Non-Parametric Iterative Algorithm For Adaptive Sampling And Robotic Vehicle Path Planning

机译:一种非参数迭代算法,适用于自适应采样与机器人路径规划

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Efficient adaptive strategies are required to facilitate the role of robotic vehicles as mobile platforms supporting sensing, monitoring, and tracking capabilities. Such strategies utilize a representation of sensor variable fields as a basis for the selection of sample points. In this paper a curvature based criterion for sample selection is presented. The Curvature-Sensitive Sampling Algorithm (CSS) utilizes the estimated second-derivative of an intermediate variable field to select sample points of interest for complex process models, such as used in oceanographic sampling with AUVs. For processes for which little or no prior knowledge base exists, an Iterative Curvature-based Adaptive Sampling Algorithm (ICASA) is presented. The ICASA algorithm iteratively selects sets of sample locations based on non-parametric field representations. These algorithms are evaluated with respect to simulated data, experimental data, and data from oceanographic models. The performance is shown to be significantly better than the conventional uniform grid methodology. The selected iterative samples are used to create a path plan for a robotic vehicle sampling in the region of interest.
机译:有效的自适应策略是促进机器人车辆作为支持传感,监控和跟踪能力的移动平台的作用。这种策略利用传感器变量字段的表示作为选择采样点的基础。在本文中,提出了一种基于曲率的样品选择标准。曲率敏感的采样算法(CSS)利用中间变量的估计的第二导数,以选择复杂的过程模型的样本点,例如在海洋采样中使用的AUV。对于存在少数或没有现有知识库的过程,呈现了一种迭代曲率的自适应采样算法(ICASA)。 ICASA算法迭代地选择基于非参数字段表示的样本位置组。通过来自海洋模型的模​​拟数据,实验数据和数据进行评估这些算法。表现明显优于传统的均匀网格方法。所选择的迭代样本用于在感兴趣区域中创建用于机器人车辆采样的路径计划。

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