Comparison of weights connection strategies for spoken Malay speech recognition system

N. Seman
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引用次数: 1

Abstract

This paper presents the comparison performance of weights connection strategies approaches between artificial neural network (ANN), conjugate gradient (CG) learning algorithms with genetic algorithms (GA) method for acoustic modelling speech recognition system. Both methods are used to find the optimum weights for the hidden and output layers of artificial neural network (ANN) model. Each algorithm is presented in separate module and we proposed three different types of Weights Connection Strategies for combining both algorithms to improve the recognition performance of spoken Malay speech recognition. Two different GA techniques are used in this research: a mutated GA (mGA) technique is proposed and compared with the standard GA technique. One hundred experiments with 5000 words are conducted using the proposed strategies. Owing to previous facts, GA combined with ANN proved to attain certain advantages with sufficient recognition performance. Thus, from the results, it was observed that the performance of mutated GA algorithm when combined with CG is better than standard GA and CG models. Integrating the GA with feed-forward network improved mean square error (MSE) performance and with good connection strategy by this two stage training scheme, the recognition rate is increased up to 99%.
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马来语语音识别系统的权值连接策略比较
本文比较了人工神经网络(ANN)、共轭梯度(CG)学习算法和遗传算法(GA)方法在声学建模语音识别系统中的权重连接策略方法的性能。这两种方法都用于寻找人工神经网络模型隐含层和输出层的最优权值。每个算法都在单独的模块中提出,我们提出了三种不同类型的权重连接策略来结合这两种算法来提高马来语语音识别的识别性能。本文采用了两种不同的遗传算法:提出了一种突变遗传算法(mGA),并与标准遗传算法进行了比较。使用所提出的策略进行了100个5000个单词的实验。综上所述,遗传算法与人工神经网络结合具有一定的优势,具有足够的识别性能。因此,从结果中可以看出,突变遗传算法与CG模型结合时的性能优于标准遗传模型和CG模型。将遗传算法与前馈网络相结合,提高了均方误差(MSE)性能,并采用良好的两阶段训练策略,使识别率提高到99%以上。
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