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Robust and Optimum Features for Persian Accent Classification Using Artificial Neural Network

机译:基于人工神经网络的波斯口音分类的鲁棒和最优特征

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This paper presents a classification model for regional accents of Persian. The model is based on a combination of the conventional speech coding and pattern recognition techniques. In this study, the well-known multilayer perceptron plays the role of the classifier. Moreover, a wide variety of speech coding techniques is utilized for feature extraction. Among them, we determine the robust and optimum features for this task by comparing the classification performance. The method is validated on a corpus containing recordings from ten speakers, five males and five females, for each accent. Results show that perceptual linear predictive (PLP), relative spectral transform PLP (Rasta PLP), and linear predictive coefficient (LPC) perform well under both clean and noisy conditions.
机译:本文提出了波斯语区域重音的分类模型。该模型基于常规语音编码和模式识别技术的组合。在这项研究中,著名的多层感知器扮演了分类器的角色。此外,各种各样的语音编码技术被用于特征提取。其中,我们通过比较分类性能来确定此任务的鲁棒和最佳功能。该方法在一个语料库上得到了验证,该语料库包含每个口音的十位演讲者,五位男性和五位女性的录音。结果表明,在干净和嘈杂的条件下,感知线性预测(PLP),相对光谱变换PLP(Rasta PLP)和线性预测系数(LPC)均表现良好。

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