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Random Matrix-Optimized High-Dimensional MVDR Beamforming

机译:随机矩阵优化的高维MVDR波束成形

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A new approach to minimum variance distortionless response (MVDR) beamforming is proposed under the assumption of simultaneously large numbers of array sensors and observations. The key to our method is the design of an inverse covariance estimator which is appropriately optimized for the MVDR application. This is obtained by exploiting spectral properties of spiked covariance models in random matrix theory. Our proposed solution is simple to implement and is shown to yield performance improvements over competing approaches.
机译:在同时存在大量阵列传感器和观测值的假设下,提出了一种新的最小方差无失真响应(MVDR)波束成形的新方法。我们方法的关键是设计一个针对MVDR应用进行了适当优化的逆协方差估计器。这是通过利用随机矩阵理论中的尖峰协方差模型的光谱特性来获得的。我们提出的解决方案易于实施,并且在竞争方法中表现出明显的性能提升。

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