首页> 外文会议>Higher-Order Statistics, 1999. Proceedings of the IEEE Signal Processing Workshop on >Design of low rank estimators for higher-order statistics based on the second-order statistics
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Design of low rank estimators for higher-order statistics based on the second-order statistics

机译:基于二阶统计量的高阶统计量低秩估计器设计

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Higher-order statistics (HOS) are well known for their robustness to additive Gaussian noise and their ability to preserve phase. HOS estimates on the other hand, have been criticised for high complexity and the need of long data in order to maintain low variance. Rank reduction offers a general principle for reduction of estimator variance and complexity. In this paper we consider the problem of designing low-rank estimators for third-order statistics (TOS). We propose a method for choosing the rank reduced transformation matrix based on the second-order statistics of the signal. Results indicate that the proposed approach significantly reduces the mean square error associated with the TOS estimates. Simulation results are presented to also demonstrate the advantages of using low rank TOS estimates for blind system estimation.
机译:高阶统计量(HOS)以其对加性高斯噪声的鲁棒性和保持相位的能力而闻名。另一方面,由于高复杂性和需要长数据以保持低方差,人们批评了居屋估价。秩降低为减少估计量方差和复杂度提供了一般原则。在本文中,我们考虑为三阶统计量(TOS)设计低秩估计器的问题。我们提出了一种基于信号的二阶统计量来选择降阶变换矩阵的方法。结果表明,所提出的方法显着降低了与TOS估计值相关的均方误差。给出了仿真结果,以证明使用低秩TOS估计进行盲系统估计的优势。

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