A Voice-Based Personal Assistant for Mental Health in Kreol Morisien

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
B. Gobin-Rahimbux, N. Gooda Sahib, N. Peerthy, A. Taylor
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引用次数: 0

Abstract

Voice-based smart personal assistants (VSPAs) are applications that recognize speech-based input and perform a task. In many domains, VSPA can play an important role as it mimics an interaction with another human. For low-resource languages, developing a VSPA can be challenging due to the lack of available audio datasets. In this work, a VSPA in Kreol Morisien (KM), the native language of Mauritius, is proposed to support users with mental health issues. Seven conversational flows were considered, and two speech recognition models were developed using CMUSphinx and DeepSpeech, respectively. A comparative user evaluation was conducted with 17 participants who were requested to speak 151 sentences of varying lengths in KM. It was observed that DeepSpeech was more accurate with a word error rate (WER) of 18% compared to CMUSphinx at 24%, that is, DeepSpeech fully recognized 76 sentences compared to CMUSphinx where only 57 sentences were fully recognized. However, DeepSpeech could not fully recognize any 7-word sentences, and thus, it was concluded that the contributions of DeepSpeech to automatic speech recognition in KM should be further explored. Nevertheless, this research is a stepping stone towards developing more VSPA to support various activities among the Mauritian population.
基于语音的 Kreol Morisien 心理健康私人助理
语音智能个人助理(VSPA)是一种能识别语音输入并执行任务的应用程序。在许多领域,VSPA 都能发挥重要作用,因为它能模拟与他人的交互。对于低资源语言,由于缺乏可用的音频数据集,开发 VSPA 可能具有挑战性。在这项工作中,提出了一种毛里求斯母语 Kreol Morisien(KM)的 VSPA,以支持有心理健康问题的用户。我们考虑了七种对话流,并分别使用 CMUSphinx 和 DeepSpeech 开发了两种语音识别模型。对 17 名参与者进行了用户对比评估,要求他们用 KM 说出 151 个长短不一的句子。据观察,DeepSpeech 的准确度更高,词错误率 (WER) 为 18%,而 CMUSphinx 为 24%,也就是说,DeepSpeech 能完全识别 76 个句子,而 CMUSphinx 只能完全识别 57 个句子。然而,DeepSpeech 无法完全识别任何 7 个单词的句子,因此,DeepSpeech 对知识管理中自动语音识别的贡献有待进一步探索。不过,这项研究为开发更多的 VSPA 以支持毛里求斯民众的各种活动奠定了基础。
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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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