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Motion-Aided Network SLAM

机译:运动辅助网络SLAM

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摘要

A key problem in the deployment of sensor networks is that of determining the location of each sensor such that subsequent data gathered can be registered. We would also like the network to provide localization for mobile entities, allowing them to navigate and explore the environment. In this paper, we present a thorough evaluation of our algorithm for localizing and mapping the mobile and stationary nodes in a sparsely connected sensor network using range-only measurements and odometry from the mobile node. Our approach utilizes an Extended Kalman Filter (EKF) in polar space allowing us to model the nonlinearity within the range-only measurements using Gaussian distributions. We demonstrate the effectiveness of our approach using experiments in realistic obstacle-filled environments that not only limit network connectivity but also introduce additional noise to the range data. Our results reveal that our proposed method offers good accuracy in these challenging environments even when little to no prior information is available.
机译:传感器网络部署的关键问题是确定每个传感器的位置,使得可以注册所收集的后续数据。我们还希望网络为移动实体提供本地化,允许它们导航和探索环境。在本文中,我们对我们的算法进行了彻底的评估,用于使用远程测量和来自移动节点的范围测量和测量法本地化和映射移动和静止节点的移动和静止节点。我们的方法利用了极性空间中的扩展卡尔曼滤波器(EKF),允许我们使用高斯分布在仅限于仅限范围的测量内模拟非线性。我们展示了我们使用实际障碍环境中的实验的方法的有效性,不仅限制网络连接,而且对范围数据引入额外的噪声。我们的研究结果表明,即使在没有先前的信息时,我们所提出的方法也在这些具有挑战性的环境中提供良好的准确性。

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