A Geometric Initialization Algorithm for Blind Separation of Speech Signals

Chao Wang, Yong Fang
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Abstract

Iterative blind source separation algorithm is often equivalent to a forward neural network trained by the unsupervised learning. Training iteration of parameters should be initialized beforehand. In this paper, an initialization algorithm is proposed for the blind separation of mixed speech signals based on the geometric structure of speech signal space. After the mixed signals are whitened, the quadrants of coordinates are regarded as the local PC A subspaces of the obtained signals. The mixing matrix can be estimated by the first eigenvectors of these subspaces. Simulation results show that separation performance of the FASTICA algorithm is improved by the proposed initialization algorithm.
语音信号盲分离的几何初始化算法
迭代盲源分离算法通常等同于由无监督学习训练的前向神经网络。参数的训练迭代需要预先初始化。本文提出了一种基于语音信号空间几何结构的混合语音信号盲分离初始化算法。对混合信号进行白化处理后,将坐标象限作为得到的信号的局部pca子空间。混合矩阵可以由这些子空间的第一个特征向量估计。仿真结果表明,该初始化算法提高了FASTICA算法的分离性能。
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