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WristPress: Hand Gesture Classification with two-array Wrist-Mounted pressure sensors

机译:腕表:手势分类,具有双阵腕部压力传感器

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This paper presents a hand gesture recognition system WristPress based on only the pressure sensors, which can reflect the different pressure changes of different hand gestures. Two arrays of force sensitive resistors (FSRs) are arranged around the wrist to capture the pressure fluctuation with the subtle muscle and tendon movements of different gestures, which can help to identify similar gestures for achieving more functions. For distinguishing more gestures with similar muscle and tendon movements, the temporal features and the spatial features of pressures are selected and designed to characterize the relation of every tiny pressure changes corresponding to the muscle and tendon movements at different positions around the wrist. In the WristPress system, 24 kinds of one-gestures, which cover not only the finger movements but also rotations around the wrist and forearm, are classified with an overall 10-fold cross validation classification accuracy of 97.40%. In addition, the WristPress prototype is non-obtrusive with a small size, and is well suited to existing wearable device forms, such as smart watches and a bracelet that are already mounted on the wrist. Our study shows that the temporal features and the spatial features of these pressures can reflect the the correlation between different pressure sensors can improve the accuracy of the hand gesture classification, and the kNN classifier has the best classification accuracy performance 97.40% with a low time complexity.
机译:本文提出一种基于仅在压力传感器手势识别系统WristPress,其可以反映不同手势的不同压力的变化。力敏感电阻(FSR进行)的两个阵列被布置在手腕周围以捕获以不同姿势的细微的肌肉和腱的运动,这可帮助确定用于实现更多的功能类似的手势中的压力波动。用于区分多个手势具有相似的肌肉和腱的动作,时间特征和压力的空间特征选择和设计以表征每一个微小的压力之间的关系改变对应于在围绕手腕的不同位置的肌肉和腱的运动。在WristPress系统,24种一手势,其不仅覆盖手指的动作,而且在手腕和前臂旋转,被分类为97.40%的总的10倍交叉验证的分类精度。此外,WristPress原型是非侵扰具有小尺寸,并且非常适合于现有的可穿戴设备的形式,诸如智能手表和那些已经安装在手腕上的手镯。我们的研究表明,时间特征和这些压力的空间特征可以反映不同的压力传感器之间的相关性可以改善手势分类的准确性及kNN分类具有最佳的分类精度性能97.40%具有低时间复杂度。

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