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On the use of classifiers for text-independent speaker identification

机译:关于使用分类器进行与文本无关的说话人识别

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摘要

In this paper we have presented the comparative study of different modelling techniques (classifiers) for the text independent speaker identification. Four classifiers, namely, Gaussian mixture models, Fuzzy min-max neural network, Self organizing map, and Vector Quantization based Probabilistic Neural Network (VQ-PNN) have been used for the study. The database containing speech utterances recorded from forty two speakers in Hindi language was used for experimentation. Mel frequency cepstral coefficients that represent short time spectrum are used as features for identification. The performance of four classifiers is analysed under clean- and noisy-speech environment for different signal to noise ratios. All the four classifiers have almost similar performance for 10 second test speech utterances under clean environment. However, GMM outperforms other three classifiers under noisy test conditions.
机译:在本文中,我们介绍了针对文本独立的说话人识别的不同建模技术(分类器)的比较研究。该研究使用了四个分类器,即高斯混合模型,模糊最小-最大神经网络,自组织图和基于矢量量化的概率神经网络(VQ-PNN)。实验中使用了数据库,其中包含以印度语为母语的42位说话者的语音记录。代表短时频谱的梅尔频率倒谱系数被用作识别特征。针对不同信噪比,在干净和嘈杂的语音环境下分析了四个分类器的性能。在干净的环境下,所有四个分类器在10秒测试语音发音方面的性能几乎相似。但是,在嘈杂的测试条件下,GMM的表现优于其他三个分类器。

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