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Reactive Hand Movements from Arm Kinematics and EMG Signals Based on Hierarchical Gaussian Process Dynamical Models

机译:基于等级高斯工艺动态模型的ARM运动学和EMG信号的反应性手动

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The prediction of finger kinematics from EMG signals is a difficult problem due to the high level of noise in recorded biological signals. In order to improve the quality of such predictions, we propose a Bayesian inference architecture that enables the combination of multiple sources of sensory information with an accurate and flexible model for the online prediction of high-dimensional kinematics. Our method integrates hierarchical Gaussian process latent variable models (GP-LVMs) for nonlinear dimension reduction with Gaussian process dynamical models (GPDMs) to represent movement dynamics in latent space. Using several additional approximations, we make the resulting sophisticated inference architecture real-time capable. Our results demonstrate that the prediction of hand kinematics can be substantially improved by inclusion of information from the online-measured arm kinematics, and by exploiting learned online generative models of finger kinematics. The proposed architecture provides a highly flexible framework for the integration of accurate generative models with high-dimensional motion in real-time inference and control problems.
机译:由于记录的生物信号中的高噪声,从EMG信号预测来自EMG信号的难题。为了提高这种预测的质量,我们提出了一种贝叶斯推理架构,其使得多个感官信息源的组合具有精确和灵活的用于在线预测的高维运动学的模型。我们的方法集成了具有高斯工艺动态模型(GPDMS)的非线性尺寸减少的分层高斯过程潜变量模型(GP-LVM),以表示潜伏空间中的运动动态。使用几种附加近似值,我们使得产生的复杂推理架构实时能够。我们的结果表明,通过从在线测量的ARM运动学中包含信息,可以基本上改善了手动运动学的预测,并通过利用了手指运动学的在线生成模型。该拟议的架构提供了一种高度灵活的框架,用于在实时推理和控制问题中具有高维运动的准确生成模型。

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