基于二维卷积神经网络的噪声音素识别

Justina Ramonaitė, G. Korvel
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引用次数: 0

摘要

语音是日常生活中最重要的组成部分之一,人们从不同的角度对语音进行了研究,但在有噪声的语音信号中仍有探索的空间。本研究通过使用干净语音和带有附加噪声的语音数据进行识别过程,研究了如何在存在噪声的情况下识别语音信号。谱图和梅尔谱图已经提取和测试使用卷积神经网络。研究了无噪声数据和由干净音素信号和有噪声音素信号组成的混合数据的训练问题。实验结果表明,与不含噪声的训练模型相比,使用含噪声样本集训练的模型对含噪声信号进行分类的效果更好。Mel谱图比谱图更能表征噪声信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noisy Phoneme Recognition Using 2D Convolution Neural Network
Speech is one of the most important parts of everyday life, thus it has been investigated from various standpoints, however, there is still room for exploration within noisy speech signals. This study examines how speech signals are recognized in the presence of noise by conducting a recognition process using both clean speech and speech data with additive noise. Spectrograms and Mel Spectrograms have been extracted and tested using a Convolutional Neural Network. Training on noise-free data and on mixed data which has been composed of clean and noisy phoneme signals has been considered. The experimental results showed that model trained with set which includes noisy samples gives better results when classifying signals with noise present compared to noise-free trained model. It was also revealed that Mel Spectrograms represent noisy signals better than Spectrograms.
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