Features Selection for Force Myography Based Hand Gesture Recognition

Malak Fora, Manar Jaradat, B. B. Atitallah, Congyu Wu, O. Kanoun
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Abstract

Hand gesture recognition has a wide range of applications in robotics, game control, and in communication with the deaf and people with trouble hearing. Recognition of American sign language (ASL) hand gestures has been extensively studied in the literature. Multiple data sources and different features extracted from these data were used to classify ASL gestures. In this study, we examined the features used in previous research to determine the minimum number of features that can give an accurate classification of ASL hand gestures. Force myography (FMG) signals captured for ASL gestures of digits 0–9 were used in this analysis of the selected features. Extracted features from the raw FMG signals were applied to K-nearest neighbors (KNN) and Extreme Learning Machine (ELM) to evaluate their efficiency in identifying the corresponding hand gesture. Results show that using only the mean value as input to classification algorithms yields the highest classification accuracy. The classification accuracy was 90% and 96.9% for KNN and ELM, respectively.
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基于力肌图的手势识别特征选择
手势识别在机器人、游戏控制以及与聋哑人和有听力障碍的人的交流中有着广泛的应用。美国手语(ASL)手势的识别在文献中得到了广泛的研究。利用多个数据源和从这些数据中提取的不同特征对手语手势进行分类。在这项研究中,我们检查了以前研究中使用的特征,以确定可以准确分类美国手语手势的最小特征数量。从数字0-9的ASL手势中捕获的力肌图(FMG)信号被用于分析所选择的特征。从原始FMG信号中提取的特征应用于k近邻(KNN)和极限学习机(ELM),以评估它们识别相应手势的效率。结果表明,仅使用均值作为分类算法的输入,分类精度最高。KNN和ELM的分类准确率分别为90%和96.9%。
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