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将声学映射到荷兰语的发音姿势中:关联语音姿势、声学和神经数据。

Mapping Acoustics to Articulatory Gestures in Dutch: Relating Speech Gestures, Acoustics and Neural Data.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:802-806. doi: 10.1109/EMBC48229.2022.9871909.

Abstract

Completely locked-in patients suffer from paralysis affecting every muscle in their body, reducing their communication means to brain-computer interfaces (BCIs). State-of-the-art BCIs have a slow spelling rate, which inevitably places a burden on patients' quality of life. Novel techniques address this problem by following a bio-mimetic approach, which consists of decoding sensory-motor cortex (SMC) activity that underlies the movements of the vocal tract's articulators. As recording articulatory data in combination with neural recordings is often unfeasible, the goal of this study was to develop an acoustic-to-articulatory inversion (AAI) model, i.e. an algorithm that generates articulatory data (speech gestures) from acoustics. A fully convolutional neural network was trained to solve the AAI mapping, and was tested on an unseen acoustic set, recorded simultaneously with neural data. Representational similarity analysis was then used to assess the relationship between predicted gestures and neural responses. The network's predictions and targets were significantly correlated. Moreover, SMC neural activity was correlated to the vocal tract gestural dynamics. The present AAI model has the potential to further our understanding of the relationship between neural, gestural and acoustic signals and lay the foundations for the development of a bio-mimetic speech BCI. Clinical Relevance- This study investigates the relationship between articulatory gestures during speech and the underlying neural activity. The topic is central for development of brain-computer interfaces for severely paralysed individuals.

摘要

完全闭锁综合征患者全身瘫痪,仅剩下大脑与脑机接口(BCI)之间的联系。目前的 BCI 拼写速度较慢,这不可避免地给患者的生活质量带来了负担。新的技术通过仿生方法解决了这个问题,该方法包括解码语音运动皮层(SMC)的活动,而这些活动是声道构音器官运动的基础。由于结合神经记录记录构音数据通常是不可行的,因此本研究的目的是开发声学到构音的反转(AAI)模型,即一种从声学生成构音数据(语音手势)的算法。训练了一个全卷积神经网络来解决 AAI 映射问题,并在同时记录神经数据的未见过的声学集上进行了测试。然后使用表示相似性分析来评估预测手势和神经反应之间的关系。网络的预测和目标具有显著的相关性。此外,SMC 神经活动与声道构音动力学相关。该 AAI 模型具有进一步了解神经、手势和声学信号之间关系的潜力,并为仿生语音 BCI 的开发奠定了基础。临床相关性- 本研究调查了语音过程中的构音手势与潜在神经活动之间的关系。对于严重瘫痪个体的脑机接口开发,该主题至关重要。

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