以同一肢体运动为重点的多脑系统界面运动意象研究

Mohit Patil, Nikhil Garg, L. Kanungo, V. Baths
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引用次数: 2

摘要

本研究的重点是简单的上肢运动;在基于运动意象(MI)的脑系统接口(BSI)中使用抬起和握紧。此外,我们还分析了同一肢体运动图像及其在开发多类肢体运动指数中的有效性。利用正则化公共空间模式工具箱中的特征提取和分类方法对15个主题数据集进行了分析。本研究提出了离线分析的结果。使用预先选择的特征提取和分类,使用One-Versus-One (OVO)和One-Versus-Rest (OVR)方法进行多类分析。采用一种新颖的基于分数的方法将OVO和OVR二元分类器转换为4类分类器。在二元分类中,举起和握紧动作都没有表现出任何实质性的优势。此外,在同一肢体内,即使在相同的神经通路上,两种运动上接近的动作(举和握紧)也表现出良好的可区分性。然而,需要进一步分析相同肢体动作在4类环境中的表现。相同的肢体运动,如果成功结合,在多类BSI中显示出增加可分化类数的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of motor imagery for multiclass brain system interface with a special focus in the same limb movement
The presented study focuses on simple upper limb movements; lifting and clenching for use in Motor Imagery (MI) based Brain System Interface (BSI). Furthermore, we analyzed the same limb movement imagery and its validity in developing multi-class BSI. 15 subject datasets were analyzed using feature extraction and classification methods from regularized common spatial pattern toolbox. The results for offline analysis are presented in this study. The multiclass analysis was done using One-Versus-One (OVO) and One-Versus-Rest (OVR) approaches using pre-selected feature extraction and classification. OVO and OVR binary classifiers were converted into 4 class classifiers using a novel score based method. Neither lifting nor clenching actions showed any substantial advantage over the other for binary classification. Furthermore, within the same limb, two kinesthetically close actions (lifting vs. clenching) show good differentiability even with the same shared neural pathway. However, further analysis of the performance of the same limb actions in the 4 class environment is required. The same limb movements, if successfully incorporated, shows potential in increasing the number of differentiable classes in a multiclass BSI.
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