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Mathematical modeling and grey-box identification of the human smooth pursuit mechanism

机译:人类平滑追随机制的数学建模和灰箱识别

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A mathematical model of the human eye smooth pursuit mechanism was constructed by combining a fourth order nonlinear biomechanical model of the eye plant with a dynamic gain controller model. The biomechanical model was derived based on knowledge of the anatomical properties and characteristics of the extraocular motor system. The controller model structure was chosen empirically to agree with experimental data. With the parameters of the eye plant obtained from the literature, the controller parameters were estimated through grey-box identification. Randomly generated and smoothly moving visual stimuli projected on a computer monitor were used as input data while the output data were the resulting eye movements of test subjects tracking the stimuli. The model was evaluated in terms of accuracy in reproducing eye movements registered over time periods longer than 10 seconds, frequency characteristics and angular velocity step responses. It was found to perform better than earlier models for the extended time data sets used in this study.
机译:通过将人眼植物的四阶非线性生物力学模型与动态增益控制器模型相结合,构建了人眼平滑追踪机制的数学模型。生物力学模型是基于眼外运动系统的解剖学特性和特征的知识而得出的。根据经验选择控制器模型的结构以与实验数据一致。利用从文献中获得的眼植物参数,通过灰箱识别来估计控制器参数。投影在计算机监视器上的随机生成的且平滑移动的视觉刺激用作输入数据,而输出数据是跟踪该刺激的测试对象的眼睛运动结果。在再现在超过10秒的时间段内记录的眼动的准确性,频率特性和角速度阶跃响应方面对模型进行了评估。对于本研究中使用的扩展时间数据集,发现其性能优于早期模型。

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