基于噪声源和声道特征的鲁棒说话人识别

Ning Wang, P. C. Ching, Nengheng Zheng, Tan Lee
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引用次数: 6

摘要

在语音产生机制的激励下,我们提出了一种使用源集特征来训练说话人模型进行识别的新思路。考虑到说话人识别系统在噪声环境下运行时可能由于缺乏说话人特征信息而导致的严重退化,我们提出了一种鲁棒特征估计方法,该方法可以从噪声输入语音中捕获源和通道相关的语音属性。作为一种简单而实用的语音增强技术,谱减法算法在特征提取之前去除加性噪声。通过分析推导和仿真表明,所提出的特征估计方法具有鲁棒的识别性能,特别是在非常低的信噪比下。在输入语音中存在加性高斯白噪声的基于高斯混合模型的说话人识别中,新方法在0 ~ 15 dB的信噪比范围内实现了识别错误率和等错误率的一致降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Speaker Recognition Using Both Vocal Source and Vocal Tract Features Estimated from Noisy Input Utterances
Motivated by the mechanism of speech production, we present a novel idea of using source-tract features in training speaker models for recognition. By considering the severe degradation occurring when a speaker recognition system operates under noisy environment, which could well be due to the missing of speaker-distinctive information, we propose a robust feature estimation method that can capture the source and tract related speech properties from noisy input speech utterances. As a simple yet useful speech enhancement technique, spectral subtractive-type algorithm is employed to remove the additive noise prior to feature extraction process. It is shown through analytical derivation as well as simulation that the proposed feature estimation method leads to robust recognition performance, especially for very low signal-to-noise ratios. In the context of Gaussian mixture model-based speaker recognition with the presence of additive white Gaussian noise in the input utterances, the new approach produces consistent reduction of both identification error rate and equal error rate at signal-to-noise ratios ranging from 0 dB to 15 dB.
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