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Formant Based Bangla Vowel Perceptual Space Classification Using Support Vector Machine and K-Nearest Neighbor Method

机译:支持向量机和K最近邻方法的基于共振峰的孟加拉元音感知空间分类

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In the emerging field of speech processing and Automatic Speech Recognition (ASR), vowel perceptual space classification has a vital role for speech intelligibility. In this paper, formant based vowel perceptual space classification is implemented for Bangla vowels. A dataset of vowel signals for 50 speakers has been prepared. The first and second formants of vowels have been extracted from segmented recorded data of different speakers. These two formants have been employed to classify the Bangla vowels perceptual space. Two algorithms namely Support Vector Machine (SVM) and K-Nearest Neighbors (KNN) are used to classify the vowels perceptual space using formants. SVM linear kernel has turned up to be efficient with 84.3% classification accuracy and SVM radial basis function (rbf) kernel has shown to be 100% accurate. KNN has exhibited maximum of 95% classification accuracy.
机译:在新兴的语音处理和自动语音识别(ASR)领域中,元音感知空间分类对于语音清晰度具有至关重要的作用。在本文中,为孟加拉元音实现了基于共振峰的元音知觉空间分类。已经准备了用于50个扬声器的元音信号的数据集。元音的第一和第二共振峰已从不同说话者的分段记录数据中提取。这两个共振峰已被用于对孟加拉元音的感知空间进行分类。支持向量机(SVM)和K最近邻(KNN)这两种算法用于使用共振峰对元音感知空间进行分类。 SVM线性核已被证明具有84.3%的分类精度,而SVM径向基函数(rbf)核已显示出100%的精度。 KNN表现出最高95%的分类精度。

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