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Acoustic, Phonetic, and Discriminative Approaches to Automatic Language Identification

机译:自动语言识别的声学,语音和鉴别方法

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Formal evaluations conducted by NIST in 1996 demonstrated that systems that used parallel banks of tokenizer-dependent language models produced the best language identification performance. Since that time, other approaches to language identification have been developed that match or surpass the performance of phone-based systems. This paper describes and evaluates three techniques that have been applied to the language identification problem: phone recognition, Gaussian mixture modeling, and support vector machine classification. A recognizer that fuses the scores of three systems that employ these techniques produces a 2.7% equal error rate (EER) on the 1996 NIST evaluation set and a 2.8% EER on the NIST 2003 primary condition evaluation set. An approach to dealing with the problem of out-of-set data is also discussed.
机译:NIST于1996年进行的正式评估表明,使用平行的销有依赖语言模型的系统产生了最佳语言识别性能。从那时起,已经开发了与基于电话的系统的性能相匹配或超越语言识别的其他语言识别方法。本文介绍并评估了应用于语言识别问题的三种技术:电话识别,高斯混合建模和支持向量机分类。一个识别器,可以融合使用这些技术的三个系统的分数,在1996年NIST评估集和NIST 2003主条件评估集上产生2.8%EER的2.7%相同的错误率(eer)。还讨论了处理禁止禁止数据问题的方法。

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