一种新的基于多特征和PCA的i向量框架用于短语音条件下的说话人识别

Chi Zhang, Xiaoqiang Li, Wei Li, Peizhong Lu, Wenqiang Zhang
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引用次数: 2

摘要

由于训练和测试语音的长度很短,短语音条件下的说话人识别是一个困难的课题。现有的说话人识别方法的一个主要缺点是需要非常充足的数据,在实际应用中往往是不可能的。在我们的实验中,单一特征的传统方法在短语音中表现不佳。为了克服这一困难,我们提出了一种新的i-vector框架,在短语音条件下使用多特征和主成分分析(PCA),因为多个特征组合可以代表说话者的更多方面。采用主成分分析法将多个特征映射到一个不相关的正交基集上,以满足高斯混合模型(GMM)对角协方差矩阵和i向量的要求。在2010年NIST说话人识别评估(SRE)的电话条件下,与最先进的系统相比,所提出的方法在相同错误率下的相对改进约为50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel i-vector framework using multiple features and PCA for speaker recognition in short speech condition
Speaker recognition in short speech condition is a difficult topic because the length of training and test speech is very short. One of the main disadvantage of the existing methods for speaker recognition is that they need very sufficient data and it's usually impossible in reality applications. In our experiments, the conventional methods with single feature don't make good performance in short speech. We propose a novel i-vector framework using multiple features and Principal Component Analysis (PCA) in short speech condition to overcome this difficulty, as multiple features combination can represent more aspects of a speaker. PCA is used to map the multiple features to an uncorrelated and orthogonal basis set to meet the requirements of Gaussian Mixture Model (GMM) with diagonal covariance matrices and i-vector. Improvement from the proposed approach compared to a state-of-the-art system are of roughly 50% relative at equal error rate when evaluated on the telephone conditions from the 2010 NIST speaker recognition evaluation (SRE).
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