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Signal processing advances for the MUTE sEMG-based silent speech recognition system

机译:基于静音SEMG的无声语音识别系统的信号处理进步

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Military speech communication often needs to be conducted in very high noise environments. In addition, there are scenarios, such as special-ops missions, for which it is beneficial to have covert voice communications. To enable both capabilities, we have developed the MUTE (Mouthed-speech Understanding and Transcription Engine) system, which bypasses the limitations of traditional acoustic speech communication by measuring and interpreting muscle activity of the facial and neck musculature involved in silent speech production. This article details our recent progress on automatic surface electromyography (sEMG) speech activity detection, feature parameterization, multi-task sEMG corpus development, context dependent sub-word sEMG modeling, discriminative phoneme model training, and flexible vocabulary continuous sEMG silent speech recognition. Our current system achieved recognition accuracy at developable levels for a pre-defined special ops task. We further propose research directions in adaptive sEMG feature parameterization and data driven decision question generation for context-dependent sEMG phoneme modeling.
机译:军事语音沟通通常需要在非常高的噪音环境中进行。此外,有方案,例如特殊操作任务,它有利于具有隐蔽的语音通信。为了实现这两种能力,我们开发了静音(口交 - 语音理解和转录引擎)系统,通过测量和解释静音语音生产中涉及的面部和颈部肌肉组织的肌肉活动来绕过传统声学语音通信的局限性。本文详细介绍了我们最近的自动表面肌电图(SEMG)语音活动检测,特征参数化,多任务SEMG语料库开发,上下文依赖子字SEMG建模,鉴别性音素模型培训,灵活的词汇连续SEMG沉默语音识别。我们目前的系统在预定义的特殊OPS任务中实现了识别准确性。我们在自适应SEMG特征参数化和数据驱动决策问题中进一步提出了研究方向,以获取上下文依赖的SEMG音素建模。

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