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Four Sensors Bracelet for American Sign Language Recognition based on Wrist Force Myography

机译:基于腕力肌电学的美国手语识别四传感器手链

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Recently, Force myography (FMG) has emerged as an alternate method for gesture recognition applications. It is usually used as raw signal, in combination with data acquired from other sensors or with a large number of sensors for an efficient recognition performances. Only four FMG commercial sensors constitute the proposed gesture recognition system. They are connected as an FSR sensor’s bracelet applied for american sign language(ASL) recognition. In this paper, a comparative study between raw FMG and six commonly extracted features when implemented on the Extreme Learning Machine (ELM) to assess the accuracy of nine ALS alphabet recognition system. 16 trials of the nine gestures were collected from a healthy male wearing the FMG bracelet. In addition, 5 folds cross validation was implemented during the ELM training. As results it was noted that the accuracy based on six commonly features was equal to 89.65%, which over perform not only the raw FMG based gesture recognition that reached only a testing total accuracy of 68.96% by our 4 sensors but also some 8 sensor’s raw data systems in literature.
机译:最近,力肌成像(FMG)已经成为手势识别应用程序的另一种方法。它通常用作原始信号,与从其他传感器或大量传感器获取的数据结合使用,以实现有效的识别性能。仅四个FMG商业传感器构成了建议的手势识别系统。它们连接为FSR传感器的手镯,用于美国手语(ASL)识别。在本文中,当在极限学习机(ELM)上实施原始FMG与六个常用提取特征之间的比较研究时,可以评估九种ALS字母识别系统的准确性。从一名戴着FMG手镯的健康男性那里收集了九种手势的16种试验。此外,在ELM培训期间进行了5倍交叉验证。结果表明,基于六个共同特征的准确度等于89.65%,不仅超过了基于FMG的原始手势识别,而且我们的4个传感器的测试总准确度仅为68.96%,而且超过了8个传感器的原始准确度文献中的数据系统。

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