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Bridging Dynamical Systems and Optimal Trajectory Approaches to Speech Motor Control With Dynamic Movement Primitives

机译:桥接动力系统和动态运动原语的语音电机控制的最佳轨迹方法

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Current models of speech motor control rely on either trajectory-based control (DIVA, GEPPETO, ACT) or a dynamical systems approach based on feedback control (Task Dynamics, FACTS). While both approaches have provided insights into the speech motor system, it is difficult to connect these findings across models given the distinct theoretical and computational bases of the two approaches. We propose a new extension of the most widely used dynamical systems approach, Task Dynamics, that incorporates many of the strengths of trajectory-based approaches, providing a way to bridge the theoretical divide between what have been two separate approaches to understanding speech motor control. The Task Dynamics (TD) model posits that speech gestures are governed by point attractor dynamics consistent with a critically damped harmonic oscillator. Kinematic trajectories associated with such gestures should therefore be consistent with a second-order dynamical system, possibly modified by blending with temporally overlapping gestures or altering oscillator parameters. This account of observed kinematics is powerful and theoretically appealing, but may be insufficient to account for deviations from predicted kinematics – i.e., changes produced in response to some external perturbations to the jaw, changes in control during acquisition and development, or effects of word/syllable frequency. Optimization, such as would be needed to minimize articulatory effort, is also incompatible with the current TD model, though the idea that the speech production systems economizes effort has a long history and, importantly, also plays a critical role in current theories of domain-general human motor control. To address these issues, we use Dynamic Movement Primitives (DMPs) to expand a dynamical systems framework for speech motor control to allow modification of kinematic trajectories by incorporating a simple, learnable forcing term into existing point attractor dynamics. We show that integration of DMPs with task- based point-attractor dynamics enhances the potential explanatory power of TD in a number of critical ways, including the ability to account for external forces in planning and optimizing both kinematic and dynamic movement costs. At the same time, this approach preserves the successes of Task Dynamics in handling multi-gesture planning and coordination.
机译:目前的语音电机控制模型依赖于基于轨迹的控制(Diva,Geppeto,ACT)或基于反馈控制的动态系统方法(任务动态,事实)。虽然两种方法都为语音电机系统提供了见解,但虽然给出了两种方法的不同理论和计算基础,但难以将这些发现。我们提出了最广泛使用的动态系统方法,任务动态的新延长,其中包含了许多基于轨迹的方法的优势,提供了一种方法来弥合两个独立方法来理解语音电机控制的方法之间的理论划分。任务动态(TD)模型置于语音手势通过点吸引力的动态控制,与批判性谐波振荡器一致。因此,与这种手势相关联的运动轨迹应与二阶动态系统一致,可能通过与时间上重叠的手势混合或改变振荡器参数来融合。观察到的运动学的这种叙述是强大的,理论上的吸引力,但可能不足以解释与预测的运动学的偏差 - 即,在对颌的某些外部扰动中产生的变化,获取和开发期间的控制变化,或者单词/音节频率。优化,例如将最小化清晰度努力,也与当前的TD模型不相容,尽管语音生产系统节约努力的想法具有悠久的历史,重要的是,在当前的域名理论中也发挥着关键作用 - 一般人机控制。为了解决这些问题,我们使用动态移动原语(DMP)来扩展语音电机控制的动态系统框架,以允许通过将简单的学习强制术语合并到现有点吸引子动态中来修改运动轨迹。我们表明,DMP与基于任务的点吸引力动态的集成增强了TD的潜在解释力,包括批判性方式,包括在规划和优化运动和动态运动成本中解释外力的能力。与此同时,这种方法保留了处理多姿图规划和协调方面的任务动态的成功。

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