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HCRF-UBM approach for text-independent speaker identification

机译:HCRF-UBM方法用于与文本无关的说话人识别

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摘要

Hidden conditional random fields (HCRFs) directly model the conditional probability of a label sequence given observations. Compared to hidden Markov models (HMMs), HCRFs provide a number of benefits in modeling of speech signals. This paper presents a speaker modeling technique using a universal background model (UBM) approach with discriminative trained HCRFs. An efficient method is proposed for adapting the UBM to an HCRF-based speaker model, and it is further enhanced by discriminative training. For the identification of 300 speakers drawn from the MAT2000 database, the experimental results indicate that the HCRF-UBM approach consistently achieved the lowest error rate among the three approaches (GMM-UBM, HMM-UBM and HCRF-UBM) regardless of the length of the enrollment speech. This study also investigates the elapsed times of the training (enrollment) and testing processes, with results showing that the HCRF-UBM approach outperforms HMM-UBM for both elapsed times. Compared with HMM-UBM, this setup reduced the elapsed times of the training process by 50%. These experimental results indicate that HCRF-UBM enjoys potential for development in speaker modeling.
机译:隐藏的条件随机场(HCRF)直接根据给定的观察结果对标记序列的条件概率进行建模。与隐马尔可夫模型(HMM)相比,HCRF在语音信号建模方面具有许多优势。本文介绍了使用通用背景模型(UBM)方法和具有判别能力的HCRF进行的说话人建模技术。提出了一种使UBM适应基于HCRF的说话者模型的有效方法,并且通过判别训练进一步增强了该方法。为了从MAT2000数据库中识别出300位说话者,实验结果表明HCRF-UBM方法始终实现三种方法(GMM-UBM,HMM-UBM和HCRF-UBM)中最低的错误率,而无论入学演讲。这项研究还调查了训练(注册)和测试过程的经过时间,结果表明,HCRF-UBM方法在这两个经过时间上均优于HMM-UBM。与HMM-UBM相比,此设置将训练过程的经过时间减少了50%。这些实验结果表明,HCRF-UBM在说话人建模方面具有发展潜力。

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