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Biosignal Sensors and Deep Learning-Based Speech Recognition: A Review

机译:生物关键传感器与基于深度学习的语音识别:审查

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摘要

Voice is one of the essential mechanisms for communicating and expressing one’s intentions as a human being. There are several causes of voice inability, including disease, accident, vocal abuse, medical surgery, ageing, and environmental pollution, and the risk of voice loss continues to increase. Novel approaches should have been developed for speech recognition and production because that would seriously undermine the quality of life and sometimes leads to isolation from society. In this review, we survey mouth interface technologies which are mouth-mounted devices for speech recognition, production, and volitional control, and the corresponding research to develop artificial mouth technologies based on various sensors, including electromyography (EMG), electroencephalography (EEG), electropalatography (EPG), electromagnetic articulography (EMA), permanent magnet articulography (PMA), gyros, images and 3-axial magnetic sensors, especially with deep learning techniques. We especially research various deep learning technologies related to voice recognition, including visual speech recognition, silent speech interface, and analyze its flow, and systematize them into a taxonomy. Finally, we discuss methods to solve the communication problems of people with disabilities in speaking and future research with respect to deep learning components.
机译:声音是作为人类的沟通和意图的基本机制之一。有几种声音的原因,包括疾病,事故,声乐虐待,医学手术,老化和环境污染,以及语音损失的风险继续增加。应该为语音识别和生产制定了新颖的方法,因为这会严重破坏生活质量,有时会导致社会孤立。在本文中,我们调查了口腔界面技术,这些技术是用于语音识别,生产和激励控制的口腔设备,以及基于各种传感器开发人造口科技的相应研究,包括肌电图(EMG),脑电图(EEG),电专制(EPG),电磁剖学(EMA),永磁体剖形(PMA),陀螺仪,图像和3轴磁传感器,尤其是深度学习技术。我们特别研究与语音识别相关的各种深度学习技术,包括视觉语音识别,无声语音界面,并分析其流量,并将它们系统置于分类中。最后,我们讨论解决残疾人通信问题的方法,在深层学习组件方面的说法和未来的研究中。

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