数据集大小对语音识别中深度学习的影响

A. Çayır, T. S. Navruz
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引用次数: 10

摘要

语音识别系统大多受到环境影响和口音差异的影响。因此,语音识别的研究已经开始使用深度学习来进行研究,深度学习是一种已知在语音识别和分类方面成功的方法。在本研究中,使用卷积神经网络定义了12种不同的语音命令,这是一种深度学习结构。在本研究中,研究了数据集大小对测试和识别精度的影响。此外,从主要语言为土耳其语的人的记录中准备了一个不同的数据集,以调查不同口音对测试和识别准确性的影响。在使用包含母语语音记录的测试数据集的实验中,大数据集的测试准确率为94.64%,小数据集的测试准确率为64.81%。另一方面,当测试数据集包含外国人的语音记录时,测试准确率在大数据集降至63.29%,在小数据集降至33.18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Dataset Size on Deep Learning in Voice Recognition
Voice recognition systems mostly suffer from environmental effects and accent differences. Therefore, studies on speech recognition have begun to be examined using deep learning which is a method known to be successful in speech recognition and classification. In this study, 12 different voice commands are defined using convolutional neural network, which is a deep learning structure. In this study, the effect of dataset size on test and recognition accuracy was investigated. In addition, a different dataset which was prepared from the records of people whose main language is Turkish to investigate the effect of different accents on both test and recognition accuracy. In the experiments when the test dataset including native-speaker voice records is used, the test accuracy was obtained as 94.64% for large dataset and 64.81% for small dataset. On the other hand when the test dataset including foreigner’s voice records the test accuracy reduced to 63.29% for large and 33.18% for small dataset.
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