语音识别的信念隐马尔可夫模型

Siwar Jendoubi, B. B. Yaghlane, Arnaud Martin
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引用次数: 4

摘要

语音识别搜索,自动预测说的话。众所周知,这些系统非常昂贵,因为要使用几个小时的预先录制的语音。因此,构建一个最小化识别器成本的模型将是非常有趣的。本文提出了一种基于信念hmm的语音识别方法,取代了传统的概率hmm。实验表明,我们的信念识别器对数据的缺乏不敏感,每个声学单元只需要一个示例即可进行训练,并且具有良好的识别率。因此,使用信念HMM识别器可以极大地降低这些系统的成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Belief Hidden Markov Model for speech recognition
Speech Recognition searches to predict the spoken words automatically. These systems are known to be very expensive because of using several pre-recorded hours of speech. Hence, building a model that minimizes the cost of the recognizer will be very interesting. In this paper, we present a new approach for recognizing speech based on belief HMMs instead of probabilistic HMMs. Experiments shows that our belief recognizer is insensitive to the lack of the data and it can be trained using only one exemplary of each acoustic unit and it gives a good recognition rates. Consequently, using the belief HMM recognizer can greatly minimize the cost of these systems.
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