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A complexity-reduced ML parametric signal reconstruction method

机译:降低复杂度的ML参数信号重构方法

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摘要

The problem of component estimation from a multicomponent signal in additive white Gaussian noise is considered. A parametric ML approach, where all components are represented as a multiplication of a polynomial amplitude and polynomial phase term, is used. The formulated optimization problem is solved via nonlinear iterative techniques and the amplitude and phase parameters for all components are reconstructed. The initial amplitude and the phase parameters are obtained via time-frequency techniques. An alternative method, which iterates amplitude and phase parameters separately, is proposed. The proposed method reduces the computational complexity and convergence time significantly. Furthermore, by using the proposed method together with Expectation Maximization (EM) approach, better reconstruction error level is obtained at low SNR. Though the proposed method reduces the computations significantly, it does not guarantee global optimum. As is known, these types of non-linear optimization algorithms converge to local minimum and do not guarantee global optimum. The global optimum is initialization dependent.
机译:考虑了在加性高斯白噪声中从多分量信号估计分量的问题。使用参数ML方法,其中所有分量都表示为多项式幅度和多项式相位项的乘积。通过非线性迭代技术解决了制定的优化问题,并重构了所有组件的振幅和相位参数。初始振幅和相位参数是通过时频技术获得的。提出了另一种方法,该方法分别迭代幅度和相位参数。所提出的方法大大降低了计算复杂度和收敛时间。此外,通过将提出的方法与期望最大化(EM)方法一起使用,可以在低SNR时获得更好的重构误差级别。尽管所提出的方法大大减少了计算量,但不能保证全局最优。众所周知,这些类型的非线性优化算法收敛到局部最小值,并且不能保证全局最优。全局最优取决于初始化。

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