Practical direction of arrival estimator using constrained robust Kalman filtering

Seul-Ki Han, W. Ra, Jin Bae Park
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引用次数: 6

Abstract

This paper proposes a linear estimation theory based direction of arrival (DOA) estimator to guarantee high-performance and computational efficiency. To do this, state-space system is derived from the linear prediction relation of the sinusoidal acoustic signal. Since it contains uncertain measurement matrix, the recently developed non-conservative robust Kalman filter (NCRKF) can be applied to compensate the performance degradation by the uncertain measurement matrix. However, unfortunately, the statistical information used in NCRKF scheme may not be precise in actual situation and it leads to the performance degradation. Therefore, in this paper, constrained NCRKF (CNCRKF) is presented to develop practical DOA estimator. It adopts constraint condition derived from the relation between target states to solve the performance degradation problem by the incorrect statistical information. The performance of the proposed solution is demonstrated by the computer simulation.
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约束鲁棒卡尔曼滤波到达估计的实用方向
为了保证高性能和计算效率,提出了一种基于线性估计理论的到达方向估计器。为此,从正弦声信号的线性预测关系推导出状态空间系统。由于系统中含有不确定的测量矩阵,因此近年来发展的非保守鲁棒卡尔曼滤波器(NCRKF)可以用来补偿不确定测量矩阵对系统性能的影响。然而,不幸的是,NCRKF方案中使用的统计信息在实际情况中可能不准确,从而导致性能下降。因此,本文提出了约束NCRKF (CNCRKF)来开发实用的DOA估计器。它采用从目标状态之间的关系推导出的约束条件来解决统计信息不正确导致的性能下降问题。计算机仿真验证了该方法的有效性。
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