语言调识别模型

Nuruddin Wiranda, Agfianto Eko Putro
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引用次数: 1

摘要

语言障碍是指某人不能说话,尽管说话能力对于与他人交流很重要。有语言障碍的人有自己的交流方式,即使用手语,但不是每个人都能理解手语。为了克服言语障碍通信问题,在单板计算机上实现了MFCC和反向传播ANN方法。使用MFCC方法检索语音障碍特征,使用反向传播人工神经网络进行声音模式识别。该系统使用由5个说话者组成的750个声音样本进行训练,每个人重复多达30次的单词发音(makan, kamar, kerja, harga和lapar),然后使用由5个说话者组成的125个声音样本进行测试,每个人重复5次单词。用MFCC生成的输入系数训练和测试反向传播神经网络。结果表明,MFCC和反向传播ANN方法能够以60%的准确率、40%的精密度和40%的灵敏度识别语音单词。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Identifikasi Kata Ucapan Tuna Wicara
Speech impaired is the inability of someone to speak, even though speaking ability is important in order to communicate with other people. Dealing with this as someone who has speech impairments has their own way of communicating, namely by using sign language, but not everyone understands the sign language. The MFCC and Backpropagation ANN methods are implemented on a Single Board Computer (SBC) designed to overcome speech impaired communication problems. The MFCC method is used to retrieve the features of speech impairment and the Backpropagation ANN is used for sound pattern recognition.The system was trained using 750 sound samples consisting of 5 speakers, each uttering as many as 30 repetitions of the pronunciation of words (makan, kamar, kerja, harga and lapar), then tested using 125 sound samples consisting of 5 speakers, each saying 5 repetitions of words. Training and testing of Backpropagation ANN using input coefficients generated from MFCC. The results showed that the MFCC and Backpropagation ANN methods were able to identify speech words with 60% accuracy, 40% precision and 40% sensitivity.
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