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On the Move: Localization with Kinetic Euclidean Distance Matrices

机译:运动中:动力学欧几里得距离矩阵的本地化

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In this paper, we propose kinetic Euclidean distance matrices (KEDMs)-a new algebraic tool for localization of moving points from spatio-temporal distance measurements. KEDMs are inspired by the well-known Euclidean distance matrices (EDM) which model static points. When objects move, trajectory models may enable better localization from fewer samples by trading off samples in space for samples in time. We develop the theory for polynomial trajectory models used in tracking and simultaneous localization and mapping. Concretely, we derive a semidefinite relaxation for KEDMs inspired by similar algorithms for the usual EDMs, and propose a new spectral factorization algorithm adapted to trajectory reconstruction. Numerical experiments show that KEDMs and the new semidefinite relaxation accurately reconstruct trajectories from incomplete, noisy distance observations, scattered over multiple time instants. In particular, they show that temporal oversampling can considerably reduce the required number of measured distances at any given time.
机译:在本文中,我们提出了动力学欧几里得距离矩阵(KEDMs)-一种新的代数工具,用于根据时空距离测量来定位运动点。 KEDM的灵感来自于对静态点建模的著名欧几里德距离矩阵(EDM)。当物体移动时,轨迹模型可以通过在空间上对样本进行实时权衡来从更少的样本中更好地进行定位。我们开发了用于跟踪以及同时定位和映射的多项式轨迹模型的理论。具体而言,我们从与普通EDM相似的算法启发中得出了KEDM的半确定松弛,并提出了一种适用于轨迹重建的新频谱分解算法。数值实验表明,KEDM和新的半确定松弛能从散布在多个时间点的不完整,嘈杂的距离观测值中准确地重建轨迹。特别是,它们表明时间过采样可以在任何给定时间显着减少所需的距离测量数量。

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