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首页> 外文期刊>Signal Processing, IEEE Transactions on >Underdetermined High-Resolution DOA Estimation: A src='/images/tex/25073.gif' alt='2rho'> th-Order Source-Signal/Noise Subspace Constrained Optimization
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Underdetermined High-Resolution DOA Estimation: A src='/images/tex/25073.gif' alt='2rho'> th-Order Source-Signal/Noise Subspace Constrained Optimization

机译:未确定的高分辨率DOA估计: src =“ / images / tex / 25073.gif” alt =“ 2rho”> th阶源信号/噪声子空间受限优化

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摘要

For estimating the direction of arrival (DOA)s of non-stationary source signals such as speech and audio, a constrained optimization problem (COP) that exploits the spatial diversity provided by an array of sensors is formulated in terms of a noise-eliminated local th-order cumulant matrix. The COP solution provides a weight vector to the look direction such that it is constrained to the th-order source-signal subspace when the look direction is in alignment with the true DOA; otherwise, it is constrained to the th-order noise subspace. This weight vector is incorporated into the spatial spectrum to determine the degree of orthogonality between itself and either the th-order source-signal subspace when the number of sources is unknown, or the th-order noise subspace when the number of sources is known. For a uniform linear array (ULA) of sensors, the spatial spectrum for known number of sources can theoretically be shown to identify up to sources. Realizing the difficulty in identifying stationarity in the received sensor signals, the estimate of the noise-eliminated local th-order cumulant matrix is marginalized over various possible stationary segmentations, for a more robust DOA estimation. In this paper, we focus on the use of local second and fourth order cumulants (, 2), and the proposed algorithms when
机译:为了估计非平稳源信号(如语音和音频)的到达方向(DOA),利用消除了噪声的局部项来制定利用传感器阵列提供的空间分集的约束优化问题(COP)。三阶累积量矩阵。 COP解决方案为观看方向提供权重向量,以便当观看方向与真实DOA对齐时将其约束到三阶源信号子空间。否则,它被限制在三阶噪声子空间中。将该权重向量合并到空间频谱中,以确定其自身与未知数(当源数未知时)或三阶噪声子空间(当源数已知时)之间的正交度。对于传感器的均匀线性阵列(ULA),理论上可以显示已知数量来源的空间光谱,以识别最多来源。由于难以识别接收到的传感器信号中的平稳性,因此在各种可能的固定分段上对消除噪声的局部三阶累积量矩阵的估计进行了边际化,以实现更可靠的DOA估计。在本文中,我们专注于使用本地二阶和四阶累积量(,2),以及在

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