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Fast, rank adaptive subspace tracking and applications

机译:快速,分级的自适应子空间跟踪和应用

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High computational complexity and inadequate parallelism have deterred the use of subspace-based algorithms in real-time systems. We proposed a new class of fast subspace tracking (FST) algorithms that overcome these problems by exploiting the matrix structure inherent in multisensor processing. These algorithms simultaneously track an orthonormal basis for the signal subspace and preserve signal eigenstructure information while requiring only O(Nr) operations per update (where N is the number of channels, and r is the effective rank). Because of their low computational complexity, these algorithms have applications in both recursive and block data processing. Because they preserve the signal eigenstructure as well as compute an orthonormal basis for the signal subspace, these algorithms may be used in a wide range of sensor array applications including bearing estimation, beamforming, and recursive least squares. We present a detailed description of the FST algorithm and its rank adaptive variation (RA-FST) as well as a number of enhancements. We also demonstrate the FST's rapid convergence properties in a number of application scenarios.
机译:较高的计算复杂度和不足的并行性阻止了实时系统中基于子空间的算法的使用。我们提出了一种新型的快速子空间跟踪(FST)算法,该算法通过利用多传感器处理中固有的矩阵结构来克服这些问题。这些算法同时跟踪信号子空间的正交基础,并保留信号本征结构信息,同时每次更新仅需要O(Nr)次操作(其中N是通道数,r是有效秩)。由于它们的计算复杂度低,因此这些算法在递归和块数据处理中都有应用。由于它们保留了信号的本征结构并计算了信号子空间的正交基础,因此这些算法可用于各种传感器阵列应用中,包括方位估计,波束形成和递归最小二乘。我们介绍了FST算法及其秩自适应变化(RA-FST)的详细说明以及许多增强功能。我们还演示了FST在许多应用场景中的快速收敛特性。

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