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An efficient adaptive artificial neural network based text to speech synthesizer for Hindi language

机译:基于高效的自适应人工神经网络的印地语语音合成器文本

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摘要

Speech recognition is one of the major research regions these days under speech processing. This paper depends on developing a whole process that takes the input as the text file from the user and provides the output in speech form. This paper proposes a text to speech synthesizer for the Hindi language depends on the coefficients of Mel-frequency cepstral (MFCC) features are extracted to the production and linguistic constraints proposed for modeling the parameters such as intonation, duration, and syllable intensities. The features extracted from the MFCC features are phrasing, fundamental frequency, duration, etc. Neural network models are discovered to confine the features as mentioned earlier, employing MFCC. The performance of the proposed ALO-ANN is computed utilizing objective measures such as prediction error (eta), standard deviation (sigma), and linear correlation coefficient (chi). The accuracy predicted of the proposed ALO-ANN models is high when compared with other models such as DNN and ANN. The prediction accuracy is high for ALO-ANN models when compared with other models.
机译:语音识别是这些天在语音处理下的主要研究区域之一。本文取决于开发一个整个过程,该过程将输入作为来自用户的文本文件,并在语音形式中提供输出。本文提出了语音合成器的文本,用于印地语语言取决于麦克朗谱(MFCC)的系数提取到所提取的制作和语言约束,提出用于建模语调,持续时间和音节强度的参数。从MFCC特征中提取的特征是措辞,基本频率,持续时间等。发现神经网络模型以限制前面提到的功能,采用MFCC。利用预测误差(ETA),标准偏差(SIGMA)和线性相关系数(CHI)等客观措施来计算所提出的ALO-ANN的性能。与DNN和ANN等其他模型相比,预测所提出的ALO-ANN模型的精度很高。与其他模型相比,预测精度为ALO-ANN型号很高。

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