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Predicting the initiation of minimum-jerk submovements in three-dimensional target-oriented human arm trajectories

机译:预测三维目标导向人臂轨迹中最小混蛋子组件的启动

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Target-oriented human arm trajectories can be represented as a series of summed minimum-jerk submovements. Under this framework, corrections for errors in reaching trajectories could be implemented by adding another submovement to the ongoing trajectory. It has been proposed that a feedback-feedforward error-detection process continuously evaluates trajectory error, but this process initiates corrections at discrete points in time. The present study demonstrates the ability of a feed-forward Artificial Neural Network (ANN) to learn the function of this error-detection process. Experimentally recorded human target-oriented arm trajectories were decomposed into submovements. It was assumed that the parameters of each submovement are known at their onset. Trained on these parameters, for each of three participants, an ANN can predict presence of corrections with sensitivity and specificity > 80%, and can predict their timing with R~2 > 40%.
机译:面向目标的人臂轨迹可以代表为一系列总和最低捷克语子系统。在此框架下,可以通过向正在进行的轨迹添加另一个子内容来实现达到轨迹的错误的校正。已经提出了反馈 - 前馈误差检测过程连续评估轨迹误差,但是该过程在时间的离散点发起校正。本研究展示了前馈人工神经网络(ANN)来学习该错误检测过程的功能的能力。通过实验录制的人目标导向的臂轨迹被分解成后药物。假设每个子文档的参数在其发作时是已知的。对于这些参数,对于三个参与者中的每一个训练,ANN可以预测具有敏感性和特异性的校正> 80%,并且可以预测其与R〜2> 40%的时序。

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