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The FACTS model of speech motor control: Fusing state estimation and task-based control

机译:语音运动控制的FACTS模型:融合状态估计和基于任务的控制

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摘要

We present a new computational model of speech motor control: the Feedback-Aware Control of Tasks in Speech or FACTS model. FACTS employs a hierarchical state feedback control architecture to control simulated vocal tract and produce intelligible speech. The model includes higher-level control of speech tasks and lower-level control of speech articulators. The task controller is modeled as a dynamical system governing the creation of desired constrictions in the vocal tract, after Task Dynamics. Both the task and articulatory controllers rely on an internal estimate of the current state of the vocal tract to generate motor commands. This estimate is derived, based on efference copy of applied controls, from a forward model that predicts both the next vocal tract state as well as expected auditory and somatosensory feedback. A comparison between predicted feedback and actual feedback is then used to update the internal state prediction. FACTS is able to qualitatively replicate many characteristics of the human speech system: the model is robust to noise in both the sensory and motor pathways, is relatively unaffected by a loss of auditory feedback but is more significantly impacted by the loss of somatosensory feedback, and responds appropriately to externally-imposed alterations of auditory and somatosensory feedback. The model also replicates previously hypothesized trade-offs between reliance on auditory and somatosensory feedback and shows for the first time how this relationship may be mediated by acuity in each sensory domain. These results have important implications for our understanding of the speech motor control system in humans.
机译:我们提出了一种新的语音运动控制计算模型:语音任务感知反馈控制或FACTS模型。 FACTS采用分层状态反馈控制架构来控制模拟声道并产生可理解的语音。该模型包括语音任务的高级控制和语音发音器的低级控制。在“任务动态”之后,将任务控制器建模为动态系统,以控制在声道中创建所需的收缩。任务控制器和发音控制器都依赖于声道当前状态的内部估计来生成运动命令。基于所应用控件的引用副本,此估计是从预测下一个声道状态以及预期的听觉和体感反馈的前向模型得出的。然后,将预测反馈与实际反馈之间的比较用于更新内部状态预测。 FACTS能够定性地复制人类语音系统的许多特征:该模型对感觉和运动通路中的噪声均具有鲁棒性,相对不受听觉反馈损失的影响,但受到体感反馈损失的影响更大,并且对听觉和体感反馈的外部施加的变化做出适当的反应。该模型还复制了先前假设的听觉和体感反馈之间的权衡取舍,并首次显示了在每个感觉域中的敏锐度如何介导这种关系。这些结果对我们理解人类语音运动控制系统具有重要意义。

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