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Modelling of complex signals using gaussian processes

机译:使用高斯过程对复杂信号建模

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In complex-valued signal processing, estimation algorithms require complete knowledge (or accurate estimation) of the second order statistics, this makes Gaussian processes (GP) well suited for modelling complex signals, as they are designed in terms of covariance functions. Dealing with bivariate signals using GPs require four covariance matrices, or equivalently, two complex matrices. We propose a GP-based approach for modelling complex signals, whereby the second-order statistics are learnt through maximum likelihood; in particular, the complex GP approach allows for circularity coefficient estimation in a robust manner when the observed signal is corrupted by (circular) white noise. The proposed model is validated using climate signals, for both circular and noncircular cases. The results obtained open new possibilities for collaboration between the complex signal processing and Gaussian processes communities towards an appealing representation and statistical description of bivariate signals.
机译:在复值信号处理中,估计算法需要完全了解(或准确估计)二阶统计量,这使得高斯过程(GP)非常适合建模复杂信号,因为它们是根据协方差函数进行设计的。使用GP处理双变量信号需要四个协方差矩阵,或者等效地,两个复数矩阵。我们提出了一种基于GP的方法来对复杂信号进行建模,从而通过最大似然来学习二阶统计量。特别地,当所观察的信号被(圆形)白噪声破坏时,复杂的GP方法允许以鲁棒的方式估计圆度系数。对于圆形和非圆形情况,使用气候信号验证了所提出的模型。结果为复杂信号处理和高斯过程社区之间的协作提供了开辟新的可能性,以吸引人的表示和双变量信号的统计描述。

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