基于自发语音数据的印尼地方语言识别

M. Saputri, M. Adriani
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引用次数: 4

摘要

在印尼人的日常对话中,当地语言是最广泛使用的交流媒介。保护这些当地语言至关重要,特别是对于维护语言和文化特征而言。然而,当地语言的多样性带来了交流问题。最初的解决方案之一是开发语音识别系统来识别不同的语言。本研究根据爪哇语、巽他语、马杜罗语、米南卡保语和木西语等印尼当地语言的语音数据开发了一套口语识别系统。本研究中使用的数据集是从当地无线电广播中收集的每种语言的自发语音数据。这个自发数据集包含了大量的噪声。因此,开发鲁棒的语言识别系统需要合适的特征提取和分类方法。本研究结合三种特征进行语言识别,即基于i向量的声学特征、基于平行音素的语音特征和动态韵律特征。这些特征被合并到深度神经网络(DNN)的隐藏层上。实验结果表明,在持续时间为3秒、10秒和30秒的语音数据上,将这些特征与深度神经网络相结合得到的f1分数分别为87.85%、93.46%和96.73%。
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Identifying Indonesian Local Languages on Spontaneous Speech Data
Local languages are the most widely used as communication media in the daily conversations of Indonesian people. Preserving those local languages is crucial, especially for maintaining language and cultural identities. However, the variety of local languages raises communication problems. One of initial solution is developing a spoken language identification system to recognize different languages. This study developed a system of spoken language identification from speech data for Indonesian local languages, including Javanese, Sundanese, Madurese, Minangkabau, and Musi. The dataset used in this study is spontaneous speech data collected from local radio broadcasts for each language. This spontaneous dataset contains a lot of noises. Therefore, the suitable feature extraction and classification methods are required for developing a robust language identification system. In this study, three features are combined to identify languages, namely acoustic features based on i-vector, phonotactic features based on parallel phonemes and the dynamic prosody feature. Those features are merged on the hidden layer of Deep Neural Network (DNN). The experimental results showed that the f1-score achieved by combining those features with DNN on speech data with 3 seconds, 10 seconds and 30 seconds duration are 87.85%, 93.46%, and 96.73% respectively.
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