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Speech Recognition System of Arabic Alphabet Based on a Telephony Arabic Corpus

机译:基于电话阿拉伯语语料库的阿拉伯字母语音识别系统

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Automatic recognition of spoken alphabets is one of the difficult tasks in the field of computer speech recognition. In this research, spoken Arabic alphabets are investigated from the speech recognition problem point of view. The system is designed to recognize spelling of an isolated word. The Hidden Markov Model Toolkit (HTK) is used to implement the isolated word recognizer with phoneme based HMM models. In the training and testing phase of this system, isolated alphabets data sets are taken from the telephony Arabic speech corpus, SAAVB. This standard corpus was developed by KACST and it is classified as a noisy speech database. A hidden Markov model based speech recognition system was designed and tested with automatic Arabic alphabets recognition. Four different experiments were conducted on these subsets, the first three trained and tested by using each individual subset, the fourth one conducted on these three subsets collectively. The recognition system achieved 64.06% overall correct alphabets recognition using mixed training and testing subsets collectively.
机译:语音字母表的自动识别是计算机语音识别领域的难题之一。在这项研究中,从语音识别问题的角度对口语阿拉伯字母进行了研究。该系统旨在识别孤立单词的拼写。隐马尔可夫模型工具包(HTK)用于通过基于音素的HMM模型来实现隔离的单词识别器。在该系统的训练和测试阶段,从电话阿拉伯语音语料库SAAVB中获取孤立的字母数据集。这个标准语料库是由KACST开发的,被归类为嘈杂的语音数据库。设计了基于隐马尔可夫模型的语音识别系统,并使用自动阿拉伯字母识别功能对其进行了测试。在这些子集上进行了四个不同的实验,前三个通过使用每个单独的子集进行了训练和测试,第四次则是对这三个子集共同进行。识别系统使用混合训练和测试子集共同获得了64.06%的总体正确字母识别率。

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