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Individual Finger Movement Recognition Based on sEMG and Classification Techniques

机译:基于sEMG和分类技术的个体手指运动识别。

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Hand gesture recognition is an active research area of human machine interfaces in which the person performs a hand gesture and a machine recognize the actual movement. However, the gestures can be seen as combination of individual finger movements, and recognizing the individual finger movements could improve the gesture recognition. This work presents a framework for finger movement recognition based on the feature extraction of the superficial electromiographic signals generated in the arm. We acquired a dataset with 54 subjects, and eight signals (channels) per subject. Then, features extracted in three types of domains were analized namely, time, frequency, and time-frequency forming a feature set of 720 features. A subset of features were selected and a support vector machine and k-NN classifiers were trained with a 10-fold cross-validation to prevent overfitting. We reached an accuracy over 90% implying that our proposed framework facilitates the finger movement recognition.
机译:手势识别是人机界面的活跃研究领域,在该领域中,人员执行手势,然后机器识别实际的运动。但是,手势可以看作是单个手指运动的组合,并且识别单个手指运动可以改善手势识别。这项工作提出了基于手臂中产生的表面电描记信号特征提取的手指运动识别的框架。我们获取了一个包含54个主题的数据集,每个主题有8个信号(通道)。然后,对在三种类型的域中提取的特征进行分析,即时间,频率和时频,以形成720个特征的特征集。选择了一个特征子集,并通过10倍交叉验证对支持向量机和k-NN分类器进行了训练,以防止过拟合。我们达到了90%以上的准确性,这表明我们提出的框架有助于手指运动识别。

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