部分松弛正交最小二乘加权子空间拟合到达方向估计

David Schenck, Katja Lübbe, Minh Trinh-Hoang, M. Pesavento
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引用次数: 1

摘要

最近引入了部分松弛框架来解决到达方向(DOA)估计问题[1]-[3]。在部分松弛(PR)框架下的DOA估计器在保持良好的DOA估计精度的同时,计算效率很高。这是通过保持来自期望方向的信号结构不变,同时放松来自剩余不希望的方向的信号结构来实现的。这种类型的松弛允许计算不需要的信号部分的封闭形式估计,并且与传统的频谱搜索方法(例如MUSIC)相比,提高了DOA估计的准确性。遵循与[4]类似的方法,PR框架与[5]的正交最小二乘(OLS)技术相结合。提出了一种新的基于部分松弛加权子空间拟合(PR-WSF)的DOA估计方法,迭代估计DOA。因此,每次迭代估计一个DOA,同时考虑在先前确定的具有完整信号结构的DOA下的信号贡献,以及具有宽松结构的剩余DOA。此外,提出了一种有效的部分松弛正交最小二乘加权子空间拟合(PR-OLS-WSF)方法,其计算成本与MUSIC算法相似。仿真结果表明,所提出的PR-OLS-WSF估计器在低信噪比和信噪比较近的困难场景下具有良好的性能。
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Partially Relaxed Orthogonal Least Squares Weighted Subspace Fitting Direction-of-Arrival Estimation
The Partial Relaxation framework has recently been introduced to address the Direction-of-Arrival (DOA) estimation problem [1]–[3]. DOA estimators under the Partial Relaxation (PR) framework are computationally efficient while preserving excellent DOA estimation accuracy. This is achieved by keeping the structure of the signal from the desired direction unchanged while relaxing the structure of the signals from the remaining undesired directions. This type of relaxation allows to compute closed-form estimates for the undesired signal part and improves the accuracy of the DOA estimates compared to conventional spectral-search methods like, e.g. MUSIC. Following a similar approach as in [4] the PR framework is combined with the Orthogonal Least Squares (OLS) technique of [5]. A novel DOA estimator is proposed that is based on Partially-Relaxed Weighted Subspace Fitting (PR-WSF) in which the DOAs are iteratively estimated. Thereby, one DOA is estimated per iteration, while accounting for both the signal contributions under the previously-determined DOAs, with full signal structure, as well as the remaining DOAs with relaxed structure. Moreover, an efficient implementation of the Partially-Relaxed Orthogonal Least Squares Weighted Subspace Fitting (PR-OLS-WSF) method is proposed that provides similar computational cost as the MUSIC algorithm. Simulation results show that the proposed PR-OLS-WSF estimator provides excellent performance especially in difficult scenarios with low Signal-to-Noise-Ratio (SNR) and closely spaced sources.
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