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Speech Recognition of Isolated Malayalam Words Using Wavelet Features and Artificial Neural Network

机译:使用小波特征和人工神经网络的分离的Malayalam词的语音识别

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This paper deals a novel speech feature extraction technique based on wavelet. We have employed daubechies 4 type of wavelet for feature extraction. Artificial Neural Network technique (ANN) is used for classification and recognition purpose. We have used five Malayalam (one of the South Indian languages) words for the experiment. One hundred and sixty samples are collected, categorized labeled and stored in a database. The feature vector is produced for all words and formed a training set for classification and recognition purpose. A sequence of decomposition levels are carried out to achieve a good feature vector. A feature vector of element size twelve is collected for all words at the eighth level of decomposition. A graph is also prepared for the comparison of the signal at each decomposition level. From that graph we can understand the physical changes that are occurred during the decomposition. By using this method we have achieved a recognition rate of 89%.
机译:本文涉及基于小波的新型语音特征提取技术。我们已经雇用了Daubechies 4类型的小波用于特征提取。人工神经网络技术(ANN)用于分类和识别目的。我们使用了五个Malayalam(南印度语言之一)单词进行实验。收集一百六十个样本,标记为标记并存储在数据库中。为所有单词产生特征向量,并形成用于分类和识别目的的训练集。进行一系列分解水平以实现良好的特征向量。为第八级分解的所有单词收集元素大小12的特征向量。还准备了图表,用于比较每个分解水平的信号。从该图中,我们可以了解分解过程中发生的物理变化。通过使用这种方法,我们已经实现了89%的识别率。

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