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Development of Consonant-Vowel Recognition Systems for Indian Languages : Bengali and Odia

机译:印度语言辅音元音识别系统的开发:孟加拉和奥迪亚

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The basic goal of this work is to develop a Consonant-Vowel Recognition System (CVRS) for determining a sequence of Consonant-Vowel (CV) units present in a given speech utterance. In this work, we are focusing on developing CVRSs for Indian languages namely Bengali and Odia. This framework of developing CVRSs can be extended to any Indian languages. We have developed two separate CVRSs for Bengali and Odia languages. The CVRS is developed using read speech corpus. In this study, 67 CV classes for Bengali and 58 CV classes for Odia are used. Mel Frequency Cepstral Coefficients (MFCCs) are used as features for building models. The Vowel Onset Points (VOPs) are used as anchor points for marking syllable boundaries and for feature extraction. Support Vector Machines (SVMs) are used for building CV models. The performance of the developed CVRSs are evaluated in speaker dependent and speaker independent modes. In speaker dependent case, the best percentage accuracies of Bengali and Odia CVRSs are 49.48 and 69.66 respectively whereas in speaker independent case, the best percentage accuracies of Bengali and Odia CVRSs are 40.26 and 41.59 respectively.
机译:这项工作的基本目标是建立一个辅音,元音识别系统(CVRS)确定辅音元音(CV)出现在一个给定的语音发声单元的序列。在这项工作中,我们专注于开发印度语言的CVRS,即孟加拉和奥迪亚。该开发CVRSS的框架可以扩展到任何印度语言。我们为孟加拉和幼儿语言开发了两个独立的CVRSS。 CVRS是使用读语音语料库开发的。在本研究中,使用了67个孟加拉的CV课程和58级CV课程的ODIa。 MEL频率抗康斯兰系数(MFCC)用作建筑模型的功能。元音发作点(VOPS)用作标记音节边界和特征提取的锚点。支持向量机(SVM)用于建造CV模式。发达的CVRS的性能在扬声器相关和扬声器独立模式中评估。在扬声器依赖案例中,孟加拉和幼儿CVRS的最佳百分比精度分别为49.48和69.66,而在扬声器独立情况下,孟加拉和幼儿CVRSS的最佳百分比分别为40.26和41.59。

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