首页> 外文会议>Iberoamerican congress on pattern recognition >Discrimination of Shoulder Flexion/Extension Motor Imagery Through EEG Spatial Features to Command an Upper Limb Robotic Exoskeleton
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Discrimination of Shoulder Flexion/Extension Motor Imagery Through EEG Spatial Features to Command an Upper Limb Robotic Exoskeleton

机译:通过脑电图空间特征识别上肢机器人外骨骼的肩膀屈伸运动影像

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This work presents a comparison between two methods for spatial feature extraction applied on a system to recognize shoulder flexion/extension motor imagery (SMI) tasks to convey on-line control commands towards a 4 degrees-of-freedom (DoF) upper-limb robotic exoskeleton. Riemannian geometry and Common Spatial Pattern (CSP) are applied on the filtered EEG for spatial feature extraction, which later are used by the Linear Discriminant Analysis (LDA) classifier for motor imagery (MI) recognition. Three bipolar EEG channels were used on six healthy subjects to acquire our database, composed of two classes: rest state and shoulder flexion/extension MI. Our system achieved a mean accuracy (ACC) of 75.12% applying Riemannian, with the highest performance for Subject SOI (ACC = 89.68%, Kappa = 79.37%, true positive rate (TPR) = 87.50%, and FPR < 8.13%). In contrast, for CSP, a mean ACC of 66.29% was achieved. These findings suggest that unsupervised methods for feature extraction, such as Riemannian geometry, can be suitable for shoulder flexion/extension Ml to command an upper-limb robotic exoskeleton.
机译:这项工作提出了两种用于系统的空间特征提取方法的比较,该方法用于识别肩部屈伸运动图像(SMI)任务,以向4自由度(DoF)上肢机器人传达在线控制命令外骨骼。将黎曼几何和通用空间模式(CSP)应用于经过滤波的EEG进行空间特征提取,然后由线性判别分析(LDA)分类器将其用于运动图像(MI)识别。在六个健康受试者上使用了三个双极EEG通道来获取我们的数据库,该数据库由两类组成:休息状态和肩部屈伸MI。我们的系统在应用黎曼算法时达到了75.12%的平均准确度(ACC),在主题SOI方面表现最佳(ACC = 89.68%,Kappa = 79.37%,真实阳性率(TPR)= 87.50%,FPR <8.13%)。相反,对于CSP,获得的平均ACC为66.29%。这些发现表明,用于特征提取的无监督方法,例如黎曼几何,可以适合于肩膀屈伸M1,以命令上肢机器人外骨骼。

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