Robust classification of hand posture to arm posture change using inertial measurement units

Hwiyong Choi, D. Hwang, Sangyoon Lee
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Abstract

There have been many reports about misclassification generating factors during hand posture classification. Among them, arm posture change for a classifier which employs a physical change recording sensor is expected to lower the classification success rate. This work reports an robust classification of hand posture to arm posture change by adding an arm orientation feature to the classifier to overcome the factor. Two inertial measurement units and a forearm perimeter sensor were employed to measure the arm orientation and perimeter change of the forearm respectively. Two classes of hand postures were paired with continuous arm postures and classified with k-NN classifier. The results show that the suggested method improves 5% of classification success rate compared to a classifier without the arm orientation feature for two subjects.
基于惯性测量单元的手部姿势到手臂姿势变化的鲁棒分类
关于手部姿势分类中产生误分类的因素已有很多报道。其中,对于采用物理变化记录传感器的分类器,手臂姿势变化有望降低分类成功率。本研究通过在分类器中添加手臂方向特征来克服这一因素,对手部姿势到手臂姿势的变化进行了鲁棒分类。采用两个惯性测量单元和一个前臂周长传感器分别测量前臂方向和前臂周长变化。将两类手部姿势与连续手臂姿势配对,并用k-NN分类器进行分类。结果表明,与没有手臂方向特征的分类器相比,该方法对两个对象的分类成功率提高了5%。
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