An accurate HSMM-based system for Arabic phonemes recognition

Mohamed O. M. Khelifa, M. Belkasmi, A. Yousfi, Y. Elhadj
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引用次数: 6

Abstract

The majority of successful automatic speech recognition (ASR) systems utilize a probabilistic modeling of the speech signal via hidden Markov models (HMMs). In a standard HMM model, state duration probabilities decrease exponentially with time, which fails to satisfactorily describe the temporal structure of speech. Incorporating explicit state durational probability distribution functions (pdf) into the HMM is a famous solution to overcome this feebleness. This way is well-known as a hidden semi-Markov model (HSMM). Previous papers have confirmed that using HSMM models instead of the standard HMMs have enhanced the recognition accuracy in many targeted languages. This paper addresses an important stage of our on-going work which aims to construct an accurate Arabic recognizer for teaching and learning purposes. It presents an implementation of an HSMM model whose principal goal is improving the classical HMM's durational behavior. In this implementation, the Gaussian distribution is used for modeling state durations. Experiments have been carried out on a particular Arabic speech corpus collected from recitations of the Holy Quran. Results show an increase in recognition accuracy by around 1% We confirmed via these results that such a system outperforms the baseline HTK when the Gaussian distribution is integrated into the HTK's recognizer back-end.
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一个精确的基于hsmm的阿拉伯语音素识别系统
大多数成功的自动语音识别(ASR)系统利用隐马尔可夫模型(hmm)对语音信号进行概率建模。在标准HMM模型中,状态持续概率随时间呈指数递减,不能很好地描述语音的时间结构。将显式状态持续概率分布函数(pdf)纳入HMM是克服这一弱点的一个著名的解决方案。这种方法被称为隐半马尔可夫模型(HSMM)。先前的论文已经证实,使用HSMM模型代替标准hmm模型可以提高许多目标语言的识别精度。本文讨论了我们正在进行的工作的一个重要阶段,即构建一个精确的阿拉伯语识别器,用于教学和学习目的。提出了一种以改进经典HMM的持续行为为主要目标的HSMM模型的实现。在这个实现中,使用高斯分布对状态持续时间进行建模。实验是在一个特定的阿拉伯语语料库上进行的,这些语料库是从《可兰经》的背诵中收集的。结果表明,识别精度提高了约1%,我们通过这些结果证实,当将高斯分布集成到HTK的识别器后端时,这样的系统优于基线HTK。
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