Sitting and Standing Intention Detection Based on Dynamical Region Connectivity and Entropy of EEG

Wenwen Chang, Wenchao Nie, Yueting Yuan, Yuchan Zhang, Renjie Lv, Lei Zheng, Guanghui Yan
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Abstract

Based on the brain signals, decoding and analyzing the gait features to make a reliable prediction of action intention are the core issues in the brain computer interface (BCI)-based hybrid rehabilitation and intelligent walking aid robot system. In order to realize the classification and recognition of the most basic gait processes such as standing, sitting, and quiet, this paper proposes a feature representation method based on the signal complexity and entropy of each brain region. Through the statistical analysis of these parameters between different conditions, these characteristics which sensitive to different actions are determined as a feature vector, and the classification and recognition of these actions are completed by combing support vector machine, linear discriminant analysis, and logistic regression. Experimental results show the proposed method can better realize the recognition of the aforementioned action intention. The recognition accuracy of standing, sitting, and quiet of 13 subjects is higher than 80.9%, and the highest one can reach 86.8%. Directed dynamic brain network analysis of the 8 brain regions shows that the occurrence of lower limb movement will weaken the dependence between brain regions, resulting in the weakening of network topological connection. The result has significant value for understanding human’s brain cognitive characteristics in the process of lower limb movement and carrying out the study of BCI based strategy and system for lower limb rehabilitation.
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基于脑电动态区域连通性和熵的坐立意图检测
基于脑机接口(BCI)的混合康复智能助行机器人系统的核心问题是基于脑信号的步态特征解码和分析,以实现对动作意图的可靠预测。为了实现对站、坐、静等最基本步态过程的分类和识别,提出了一种基于脑区信号复杂度和熵的特征表示方法。通过对这些参数在不同条件之间的统计分析,确定这些对不同动作敏感的特征作为特征向量,并结合支持向量机、线性判别分析和逻辑回归完成对这些动作的分类识别。实验结果表明,该方法能较好地实现对上述动作意图的识别。13名被试对站、坐、静的识别准确率均高于80.9%,最高可达86.8%。对8个脑区的定向动态脑网络分析表明,下肢运动的发生会削弱脑区之间的依赖性,导致网络拓扑连接减弱。该结果对了解人类下肢运动过程中的大脑认知特征,开展基于脑机接口的下肢康复策略和系统研究具有重要价值。
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