Novel Approach for Blind Source Separation

Md. Shiblee, B. Chandra
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Abstract

An attempt has been made to use efficient Neuron model for blind source separation. Generalized Harmonic Mean Neuron (GHMN) has been used as the neuron model. GHMN model is based on generalized harmonic mean of the inputs applied on it. Information-maximization approach has been used for training the neuron model. In this paper, it has been demonstrated how efficiently the GHMN model can be used for blind source separation. It has been shown on a generated mixture of finger prints and a real life mixture of finger prints (for blind source separation) that the new neuron model performs far superior as compared to the conventional neuron model.
一种新的盲源分离方法
尝试使用高效的神经元模型进行盲源分离。采用广义调和平均神经元(GHMN)作为神经元模型。GHMN模型基于输入的广义谐波平均值。利用信息最大化方法对神经元模型进行训练。在本文中,已经证明了GHMN模型用于盲源分离的有效性。在一个生成的混合指纹和一个真实的混合指纹(用于盲源分离)上显示,与传统的神经元模型相比,新的神经元模型的性能要优越得多。
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