Language identification with neural networks: a feasibility study

R. Cole, J.W.T. Inouye, Y. Muthusamy, M. Gopalakrishnan
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引用次数: 35

Abstract

The feasibility of an approach to automatic language identification that combines recent advances in computer speech recognition and artificial neural networks is discussed. It is shown that artificial neural networks can be used as pattern classifiers that use information about distributions of broad phonetic categories to identify languages. Using artificial languages that differ only by their distribution of stop consonants, feature vectors were extracted from varying amounts of speech from each language. These feature vectors were then used to train an artificial neural network using the back-propagation algorithm. Classification results for two different sets of artificial languages are presented.<>
神经网络语言识别的可行性研究
讨论了一种结合计算机语音识别和人工神经网络最新进展的自动语言识别方法的可行性。研究表明,人工神经网络可以作为模式分类器,利用广义语音分类的分布信息来识别语言。使用仅在停止辅音分布上有所不同的人工语言,从每种语言的不同语音量中提取特征向量。然后使用这些特征向量使用反向传播算法训练人工神经网络。给出了两组不同人工语言的分类结果。
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