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首页> 外文期刊>EURASIP journal on advances in signal processing >A Model-Selection-Based Self-Splitting Gaussian Mixture Learning with Application to Speaker Identification
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A Model-Selection-Based Self-Splitting Gaussian Mixture Learning with Application to Speaker Identification

机译:基于模型选择的自分裂高斯混合学习及其在说话人识别中的应用

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We propose a self-splitting Gaussian mixture learning (SGML) algorithm for Gaussian mixture modelling. The SGML algorithm is deterministic and is able to find an appropriate number of components of the Gaussian mixture model (GMM) based on a self-splitting validity measure, Bayesian information criterion (BIC). It starts with a single component in the feature space and splits adaptively during the learning process until the most appropriate number of components is found. The SGML algorithm also performs well in learning the GMM with a given component number. In our experiments on clustering of a synthetic data set and the text-independent speaker identification task, we have observed the ability of the SGML for model-based clustering and automatically determining the model complexity of the speaker GMMs for speaker identification.
机译:我们提出了一种用于高斯混合建模的自分裂高斯混合学习(SGML)算法。 SGML算法是确定性的,并且能够基于自分裂有效性度量贝叶斯信息准则(BIC)找到适当数量的高斯混合模型(GMM)组件。它从特征空间中的单个组件开始,并在学习过程中进行自适应拆分,直到找到最合适数量的组件。 SGML算法在学习具有给定组件编号的GMM方面也表现良好。在合成数据集的聚类和与文本无关的说话人识别任务的实验中,我们观察到了SGML基于模型的聚类的能力,并自动确定了说话人GMM用于说话人识别的模型复杂性。

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