Paine R W, Grossberg S, Van Gemmert A W A
Laboratory for Behavior and Dynamic Cognition, RIKEN Brain Science Institute, 2-1 Hirosawa, Wako-shi, Saitama 351-0198, Japan.
Hum Mov Sci. 2004 Dec;23(6):837-60. doi: 10.1016/j.humov.2004.08.024.
Much sensory-motor behavior develops through imitation, as during the learning of handwriting by children. Such complex sequential acts are broken down into distinct motor control synergies, or muscle groups, whose activities overlap in time to generate continuous, curved movements that obey an inverse relation between curvature and speed. The adaptive vector integration to endpoint handwriting (AVITEWRITE) model of Grossberg and Paine (2000) [A neural model of corticocerebellar interactions during attentive imitation and predictive learning of sequential handwriting movements. Neural Networks, 13, 999-1046] addressed how such complex movements may be learned through attentive imitation. The model suggested how parietal and motor cortical mechanisms, such as difference vector encoding, interact with adaptively-timed, predictive cerebellar learning during movement imitation and predictive performance. Key psychophysical and neural data about learning to make curved movements were simulated, including a decrease in writing time as learning progresses; generation of unimodal, bell-shaped velocity profiles for each movement synergy; size scaling with isochrony, and speed scaling with preservation of the letter shape and the shapes of the velocity profiles; an inverse relation between curvature and tangential velocity; and a two-thirds power law relation between angular velocity and curvature. However, the model learned from letter trajectories of only one subject, and only qualitative kinematic comparisons were made with previously published human data. The present work describes a quantitative test of AVITEWRITE through direct comparison of a corpus of human handwriting data with the model's performance when it learns by tracing the human trajectories. The results show that model performance was variable across the subjects, with an average correlation between the model and human data of 0.89+/-0.10. The present data from simulations using the AVITEWRITE model highlight some of its strengths while focusing attention on areas, such as novel shape learning in children, where all models of handwriting and the learning of other complex sensory-motor skills would benefit from further research.
许多感觉运动行为是通过模仿发展而来的,比如儿童学习书写的过程。这种复杂的连续动作被分解为不同的运动控制协同作用或肌肉群,它们的活动在时间上相互重叠,以产生连续的、弯曲的运动,这些运动遵循曲率和速度之间的反比关系。格罗斯伯格和佩恩(2000年)提出的自适应矢量积分到终点书写(AVITEWRITE)模型[A neural model of corticocerebellar interactions during attentive imitation and predictive learning of sequential handwriting movements. Neural Networks, 13, 999 - 1046]探讨了如何通过注意力模仿来学习这种复杂的动作。该模型提出了顶叶和运动皮层机制,如差异矢量编码,在运动模仿和预测表现过程中如何与自适应定时的、预测性的小脑学习相互作用。模拟了关于学习做出弯曲动作的关键心理物理学和神经数据,包括随着学习进展书写时间的减少;每个运动协同作用产生单峰、钟形速度曲线;等时性下的大小缩放,以及在保持字母形状和速度曲线形状的情况下的速度缩放;曲率和切向速度之间的反比关系;以及角速度和曲率之间的三分之二次幂定律关系。然而,该模型仅从一个受试者的字母轨迹中学习,并且只与先前发表的人类数据进行了定性的运动学比较。本研究通过将一组人类书写数据与模型在追踪人类轨迹学习时的表现进行直接比较,描述了对AVITEWRITE的定量测试。结果表明,模型表现因受试者而异,模型与人类数据之间的平均相关性为0.89±0.10。使用AVITEWRITE模型进行模拟得到的当前数据突出了其一些优势,同时将注意力集中在一些领域,比如儿童的新形状学习,在这些领域,所有书写模型以及其他复杂感觉运动技能的学习都将受益于进一步的研究。