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Speaker identification using Hidden Conditional Random Field-based speaker models

机译:使用基于隐藏条件随机场的说话人模型进行说话人识别

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In this paper we make a study of applying Hidden Conditional Random Fields (HCRF) to establish speaker models. A novel training algorithm combining the discriminative training criterion with HCRF for speaker identification is proposed. This work also adopted discriminative training technique to train GMM, HMM, and HCRF speaker models respectively; and the performance of speaker identification by the three speaker models with different amounts of training speech for clean and noisy testing speech were investigated. The experimental results indicate that the HCRF model consistently achieved the lowest error rate among the three models regardless of the length of the test and training speech and presence of noise.
机译:在本文中,我们对应用隐藏条件随机场(HCRF)建立说话者模型进行了研究。提出了一种结合判别训练准则和HCRF的说话人识别训练算法。这项工作还采用了判别性训练技术来分别训练GMM,HMM和HCRF说话者模型;并研究了三种具有不同训练语音量的说话人识别对于清晰和嘈杂的测试语音的说话人识别性能。实验结果表明,无论测试和训练语音的时间长短以及是否存在噪声,HCRF模型始终可以在三个模型中实现最低的错误率。

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