为多个语音处理任务建立另一个阿拉伯语语音命令数据集

Mohamed Lichouri, Khaled Lounnas, Adil Bakri
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引用次数: 1

摘要

不断扩大的互联网连接对人们的日常生活产生了巨大的影响,因为他们在手机和笔记本电脑上做任何事情[1]。为了改善人们的生活,特别是老年人和残疾人的生活,不同的研究人员开发了一些项目,同时保持技术上的先进。支持语音命令的技术,如SIRI和谷歌语音命令,是最有用的。这些系统都是以语音识别模块为基础的,语音识别模块是使人机交流更容易的最重要的模块之一。自动语音识别(ASR)通过采用数据驱动的方法在类人性能方面取得了重大进展[2]。在本文中,我们创建了一个阿拉伯语语音命令数据集,其中包括10个说话者重复10次的10个命令。尽管所获得的数据集很大,但在四个语音处理任务上进行了评估,在ASR方面的准确率达到95.9%,在说话人识别、性别识别、口音识别和口语理解方面的宏观f1得分分别为99.67%、100%、100%和97.98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Building Another Arabic Voice Command Dataset for Multiple Speech Processing Tasks
Expanding Internet connectivity has had tremendous influence on people’s everyday life, since they do everything on their phones and laptops [1]. Several items have been developed by various researchers in order to improve the lives of people, notably the elderly and disabled, while remaining technologically advanced. Voice-command-enabled technologies, such as SIRI and Google voice commands, are the most useful. These systems are based on the Speech recognition module, which is one of the most important module that can make human-machine communication easier. Automatic Speech Recognition (ASR) has made significant progress toward human-like performance by employing a data-driven method [2]. In this paper, we created an Arabic voice command dataset which include 10 commands spoken by 10 speaker and repeated 10 times. The obtained dataset, despite its size, was evaluated on four speech processing tasks and achieved an accuracy of 95.9% in ASR, and a macro F1score of 99.67%, 100%, 100%, and 97.98%, in speaker identification, gender recognition, accent recognition, and spoken language understanding, respectively.
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