基于结构高斯混合模型和神经网络的高效文本无关说话人验证

Bing Xiang, T. Berger
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引用次数: 120

摘要

我们提出了一个结构高斯混合模型(SGMMs)和神经网络的集成系统,目的是在文本无关的说话人验证中实现计算效率和高精度。首先将通用背景模型中所有高斯混合分量分层聚类,构建结构背景模型。通过这种方式,声学空间被划分为不同分辨率的多个区域。对于每个目标说话人,可以通过多电平最大后验(MAP)自适应从SBM生成SGMM。在测试过程中,为了显著降低计算成本,每个特征向量只对一小部分高斯混合分量进行评分。此外,通过神经网络将树状结构模型中不同层的得分进行组合,以进行最终决策。在NIST说话人验证评估中使用的电话语音数据上进行了不同配置的对比实验。实验结果表明,与基线相比,计算量减少了17倍,等效错误率(EER)相对减少了5%。与最近提出的散列GMM相比,SGMM-SBM也显示出一些优势,包括更高的速度和更好的验证性能。
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Efficient text-independent speaker verification with structural Gaussian mixture models and neural network
We present an integrated system with structural Gaussian mixture models (SGMMs) and a neural network for purposes of achieving both computational efficiency and high accuracy in text-independent speaker verification. A structural background model (SBM) is constructed first by hierarchically clustering all Gaussian mixture components in a universal background model (UBM). In this way the acoustic space is partitioned into multiple regions in different levels of resolution. For each target speaker, a SGMM can be generated through multilevel maximum a posteriori (MAP) adaptation from the SBM. During test, only a small subset of Gaussian mixture components are scored for each feature vector in order to reduce the computational cost significantly. Furthermore, the scores obtained in different layers of the tree-structured models are combined via a neural network for final decision. Different configurations are compared in the experiments conducted on the telephony speech data used in the NIST speaker verification evaluation. The experimental results show that computational reduction by a factor of 17 can be achieved with 5% relative reduction in equal error rate (EER) compared with the baseline. The SGMM-SBM also shows some advantages over the recently proposed hash GMM, including higher speed and better verification performance.
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