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Blind signal separation of complex-valued sources based on Gaussian mixture model for time-varying environment

机译:基于高斯混合模型对时变环境的复合源的盲信号分离

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In this paper, blind signal separation algorithms based on Gaussian mixture model of complex-valued sources are introduced. Compared with the traditional algorithms for complex-valued signals, they have two advantages: first, since they are adaptive, the changes in the environment can be tracked; second, the probability density function matching mechanism is applied to the algorithms through a Gaussian mixture model, in which way, the information of the complex-valued signals can be taken fully use of. Simulation results show that the stability is well improved by using the Gaussian mixture model while obtaining the same or better tracking ability of changing environment.
机译:本文介绍了基于复值源的高斯混合模型的盲信号分离算法。与传统算法相比,复合值的信号,它们有两个优点:首先,由于它们是自适应的,因此可以跟踪环境的变化;其次,概率密度函数匹配机制通过高斯混合模型应用于算法,以何种方式,可以充分利用复值信号的信息。仿真结果表明,通过使用高斯混合模型在获得相同或更好的跟踪能力的情况下,稳定性得到了很好的改善。

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