基于力肌图测量的KNN分类器手势识别

Malak Fora, B. B. Atitallah, K. Lweesy, O. Kanoun
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引用次数: 4

摘要

手势识别是人机界面(HMI)发展的一个重要方面,它具有广泛的应用范围,包括聋哑人的手语识别。本文采用8个纳米复合CNT/PDMS压力传感器同时提取力肌图信号。数据收集自8名健康志愿者的美国手语数字0-9。提取两组特征,第一组特征分别由所有8个传感器的原始FMG数据的平均值、标准差和均方根值组成。第二组由原始FMG信号的2范数和三个比例特征组成,其中FMG信号相对于参考rest信号进行研究。分类是使用七个单独的特征以及每个集合中的特征组合来执行的。使用KNN分类器,在$\ mathm {k}=2、\ \ mathm {k}=3$的情况下,第二组特征的组合得到了更好的测试准确率,分别为95%、91.9%。
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Hand Gesture Recognition Based on Force Myography Measurements using KNN Classifier
Hand gesture recognition presents one of the most important aspects for human machine interface (HMI) development, and it has a wide spectrum of applications including sign language recognition for deaf and dumb people. Herein, force myography signals (FMG) are extracted using eight nanocomposite CNT/PDMS pressure sensors simultaneously. Data are collected from eight healthy volunteers for American sign language digits 0–9. Two sets of features are extracted, the first one is composed of mean, standard deviation and rms values for the raw FMG data for all 8 sensors individually. The second set is composed of the 2-norm of the raw FMG signal and three proportional features, where the FMG signals are studied with respect to the reference rest signal. Classification is performed using each of the seven individual features as well as the combination of features in each set. The combination of features in the second set gives better testing accuracy of 95%, 91.9% for $\mathrm{k}=2,\ \mathrm{k}=3$ using KNN classifier, respectively.
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