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Sequential Blind Source Separation Based Exclusively on Second-Order Statistics Developed for a Class of Periodic Signals

机译:专为一类周期信号开发的基于二阶统计量的顺序盲源分离

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A sequential algorithm for the blind separation of a class of periodic source signals is introduced in this paper. The algorithm is based only on second-order statistical information and exploits the assumption that the source signals have distinct periods. Separation is performed by sequentially converging to a solution which in effect diagonalizes the output covariance matrix constructed at a lag corresponding to the fundamental period of the source we select, the one with the smallest period. Simulation results for synthetic signals and real electrocardiogram recordings show that the proposed algorithm has the ability to restore statistical independence, and its performance is comparable to that of the equivariant adaptive source separation (EASI) algorithm, a benchmark high-order statistics-based sequential algorithm with similar computational complexity. The proposed algorithm is also shown to mitigate the limitation that the EASI algorithm can separate at most one Gaussian distributed source. Furthermore, the steady-state performance of the proposed algorithm is compared with that of EASI and the block-based second-order blind identification (SOBI) method.
机译:介绍了一种用于一类周期源信号盲分离的顺序算法。该算法仅基于二阶统计信息,并利用了源信号具有不同周期的假设。分离是通过顺序收敛到一个解决方案来执行的,该解决方案实际上使以对应于我们选择的源的基本周期(一个周期最小的周期)的滞后关系构造的输出协方差矩阵对角化。对合成信号和真实心电图记录的仿真结果表明,该算法具有恢复统计独立性的能力,其性能可与基于基准高阶统计的顺序算法等变自适应源分离(EASI)算法相媲美。具有相似的计算复杂度。还显示了所提出的算法以减轻EASI算法最多可以分离一个高斯分布式源的限制。此外,将所提算法的稳态性能与EASI和基于块的二阶盲识别(SOBI)方法的稳态性能进行了比较。

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