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Tetrahedron-Constraint Least Square Localization Algorithm in Mixed LOS/NLOS Scenario Based on TDOA Measurements

机译:基于TDOA测量的混合LOS / NLO场景中的四面体约束最小二乘算法

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The TDOA-based indoor localization is widely utilized due to high precision. However, the ranging signals may be contaminated by non-light-of-sight (NLOS) propagation, with the results that the accuracy and robustness of localization system can be seriously degraded. In this paper, a tetrahedron-constraint assisted localization algorithm is proposed to mitigate NLOS effects. The errors induced by NLOS in ranging are positive and larger than LOS measurement noises. Depending on the character, a range estimation based on Cayley-Menger Determinant (CMD) is presented to eliminate NLOS errors and obtain distances information from every 3 TDOA measurements. A group of position estimations are calculated by Least Square algorithm. Finally, a minimum weighted cost function is established to evaluate the candidate estimations in aspect of trace smoothing and estimation residual. A practical experiment verifies its better performance of accuracy and robustness.
机译:由于精度高,基于TDOA的室内定位被广泛利用。然而,测距信号可能被非视角(NLOS)传播污染,结果是定位系统的准确性和稳健性可以严重降级。本文提出了一种四面体约束辅助定位算法来缓解NLOS效应。 NLO在测距中诱导的误差是正且大于LOS测量噪声。根据字符,提出了基于Cayley-Menger确定剂(CMD)的范围估计以消除NLOS误差并从每3个TDOA测量获得距离信息。通过最小二乘算法计算一组位置估计。最后,建立了最小加权成本函数,以评估跟踪平滑和估计残差方面的候选估计。实际实验验证了其更好的准确性和鲁棒性能。

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