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Speaker-Independent Malay Syllable Recognition Using Singular And Modular Neural Networks

机译:基于奇异和模块化神经网络的独立于说话人的马来音节识别

摘要

The paper investigates the use of Singular and Modular Neural Networks in classifying the Malay syllable sounds in a speaker-independent manner. The syllable sounds are initialized with plosives and followed by vowels. The speech tokens are sampled at 16 kHz with 16-bit resolution. Linear Predictive Coding (LPC) is used to extract the speech features. The Neural Networks utilize standard three-layer Multi-Layer Perceptron (MLP) as the speech sound classifier. The MLPs are trained with stochastic Back-Propagation (BP). The weights of the networks are updated after presentation of each training token and the sequence of the epoch is randomized after every epoch. The speech training and test tokens are obtained from 25 (17 females and 8 males) and 4 (all females) Malay adult speakers respectively. The total training and test token number are 1600 and 320 respectively. The result shows that modular neural networks outperform singular neural network with a recognition rate of about 92%.
机译:本文研究了奇异和模块化神经网络在以独立于说话者的方式对马来音节声音进行分类中的用途。音节的声音用爆破声初始化,然后是元音。语音令牌以16位分辨率以16 kHz采样。线性预测编码(LPC)用于提取语音特征。神经网络利用标准的三层多层感知器(MLP)作为语音分类器。 MLP通过随机反向传播(BP)进行训练。在给出每个训练令牌后更新网络的权重,并且在每个时期之后将时期的顺序随机化。语音培训和测试令牌分别从25位(17位女性和8位男性)和4位(所有女性)马来成人说话者那里获得。培训和测试令牌的总数分别为1600和320。结果表明,模块化神经网络的性能优于奇异神经网络,识别率约为92%。

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