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Blind Separation of Statistically Independent Signals with Mixed Sub-Gaussian and Super-Gaussian Probability Distributions

机译:用混合亚高斯和超高斯概率分布盲分离统计上独立信号

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In the context of Independent Component Analysis (ICA), we propose a simple method for online estimation of activation functions in order to blindly separate instantaneous mixtures of sub-Gaussian and super-Gaussian signals. An adequate choice of these activation functions is necessary not only for a successful source separation (using relative gradient algorithm), but also to achieve sufficient level of cross-talk index. To accomplish this, we employ a simple parameterized model for the probability density functions of sources. The parameter of this distribution model (for each estimated source signal) is adapted online by minimizing the mutual information while the activation functions are obtained as the associated score functions. Furthermore, a modified relative gradient algorithm is derived that exhibits an isotropic convergence (near the desired solution) independent of the statistics of sources. Some simulation results are given to demonstrate the effectiveness of the presented methods.
机译:在独立分量分析(ICA)的背景下,我们提出了一种简单的方法,用于激活功能的在线估计,以盲目地分离子高斯和超高斯信号的瞬时混合物。对于成功的源分离(使用相对梯度算法),还需要一种足够的选择这些激活功能,而且还需要实现足够的串扰索引。为此,我们使用一个简单的参数化模型,用于源的概率密度函数。该分布模型(对于每个估计的源信号)的参数通过最小化相互信息在获得激活功能作为关联的分数函数时在线在线调整。此外,推导出改进的相对梯度算法,其表现出与源统计学的各向同性会聚(接近所需的解决方案)。提供了一些模拟结果来证明所提出的方法的有效性。

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