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Application of support vector machines in detecting hand grasp gestures using a commercially off the shelf wireless myoelectric armband

机译:支持向量机在使用商用无线肌电臂章检测手势的应用

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The propose of this study was to assess the feasibility of using support vector machines in analysing myoelectric signals acquired using an off the shelf device, the Myo armband from Thalmic Lab, when performing hand grasp gestures. Participants (n = 26) took part in the study wearing the armband and producing a series of required gestures. Support vector machines were used to train a model using participant training values, and to classify gestures produced by the same participants. Different Kernel functions and electrode combinations were studied. Also we contrasted different lengths of training values versus different lengths for the classification samples. The overall accuracy was 94.9% with data from 8 electrodes, and 72% where only four of the electrodes were used. The linear kernel outperformed the polynomial, and radial basis function. Exploring the number of training samples versus the achieved classification accuracy, results identified acceptable accuracies (> 90%) for training around 2.5s, and recognising grasp with 0.2s of acquired data. The best recognised grasp was the hand closed (97.6%), followed by cylindrical grasp (96.8%), the lateral grasp (93.2%) and tripod (92%). These results allows us to progress to the next stage of work where the Myo armband is used in the context of robot-mediated stroke rehabilitation and also involves more dynamic interactions as well as gross upper arm movements.
机译:这项研究的目的是评估在执行手势时,使用支持向量机分析使用现成的设备(来自Thalmic Lab的Myo臂带)获取的肌电信号的可行性。参与者(n = 26)戴着臂章参加了研究,并提出了一系列必要的手势。支持向量机用于使用参与者的训练值来训练模型,并对同一参与者产生的手势进行分类。研究了不同的内核功能和电极组合。我们还对比了不同长度的训练值与不同长度的分类样本。从8个电极获得的数据的总体准确度为94.9%,在仅使用四个电极的情况下为72%。线性核的性能优于多项式和径向基函数。探索训练样本的数量与获得的分类精度之间的关系,结果确定了可接受的准确度(> 90%),可用于2.5s左右的训练,并以0.2s的采集数据来识别掌握。最佳的抓握力是手闭合(97.6%),其次是圆柱形抓力(96.8%),横向抓力(93.2%)和三脚架(92%)。这些结果使我们可以进入下一阶段的工作,在该阶段中,将Myo臂带用于机器人介导的中风康复,并且还涉及更多的动态交互作用以及上臂的总体运动。

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