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Wavelet LPC with Neural Network for SpokenArabic Digits Recognition System

机译:带有神经网络的小波LPC用于口语阿拉伯数字识别系统

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The crucial problem of Arabic recognition systems is the availability of several dialects in Arabic language, particularly those with sound variations. Therefore, low recognition rate is encountered as a result of such an environment. In this research paper the authors presented dialect-independent via an enormously effectual wavelet transform (WT) based Arabic digits classier. The proposed system may be divided into two main blocks the features extraction method by combining wavelet transform with the linear prediction coding (LPC) and the classi???cation by probabilistic neural network (PNN). The proposed classier provided a high recognition rate reaching up to 100%, in some cases, and an average rate of about 93% based on speaker-independent system. 450 Arabic spoken digit tested signals were used. The performance of the system in the noisy environment was investigated. The obtained results are very promising; however, the larger testing database may provide more credible results.
机译:阿拉伯语识别系统的关键问题是几种阿拉伯语方言的可用性,尤其是那些带有声音变化的方言。因此,由于这种环境而导致识别率低。在这篇研究论文中,作者通过基于阿拉伯数字分类器的非常有效的小波变换(WT)提出了与方言无关的方法。所提出的系统可以通过将小波变换与线性预测编码(LPC)和基于概率神经网络的分类相结合而将特征提取方法分为两个主要模块。提出的分类器在某些情况下提供了高达100%的高识别率,并且基于独立于说话人的系统的平均识别率约为93%。使用了450个阿拉伯语语音测试信号。研究了该系统在嘈杂环境中的性能。获得的结果很有希望;但是,更大的测试数据库可能会提供更可靠的结果。

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