音频数据增强技术对阿尔及利亚阿拉伯语方言电话数字识别的影响分析

Khaled Lounnas, Mohamed Lichouri, Mourad Abbas
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引用次数: 3

摘要

在本研究中,我们描述了一种解决涉及低资源语言的语音处理任务中数据稀缺性问题的解决方案,包括自动语音识别(ASR)。该方法基于一组数据增强(Data Augmentation, DA)技术,这些技术将应用于最初使用的小语料库。这个语料库包括两个阿尔及利亚人说的前100个阿拉伯数字。我们使用了多种数据分析技术来增加语料库的大小,包括在不改变音高的情况下拉伸信号,使用白噪声模拟环境,最后转移声音。最后,对两种备选配置进行了大量实验,以评估这些策略对ASR性能的影响。进行大量的测试来验证增强样本在训练集中或训练和测试集中的影响。实验结果表明,数据增强对提高识别模型的准确率有重要作用,其中噪声、时间拉伸和旋转等数据增强方法对识别模型的影响稍明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of the Effect of Audio Data Augmentation Techniques on Phone Digit Recognition For Algerian Arabic Dialect
In this study, we describe a solution for dealing with the problem of data scarcity in Speech Processing tasks involving low-resource languages, including Automatic Speech Recognition (ASR). This method is based on a set of Data Augmentation (DA) techniques that will be applied to the small corpus that was initially used. This corpus comprises the first 100 Arabic digits uttered by two native Algerians. We used a variety of DA techniques to increase the size of this corpus, including stretching the signal without changing the pitch, simulating an environment using white noise, and finally shifting the sound. Finally, a number of experiments were carried out on two alternative configurations to assess the influence of these strategies on ASR performance. Extensive tests are carried out to verify the impact of the augmented samples in the training set or the training and testing set. Experimental results show that data augmentation plays an important role in improving the accuracy of recognition models, in which the impacts of the data augmentation methods such as Noise, Time Stretch, and rotation are slightly obvious.
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