首页> 外文会议>AICI 2011;International conference on artificial intelligence and computational intelligence >Online Hand Gesture Recognition Using Surface Electromyography Based on Flexible Neural Trees
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Online Hand Gesture Recognition Using Surface Electromyography Based on Flexible Neural Trees

机译:基于柔性神经树的表面肌电在线手势识别

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摘要

Normal hand gesture recognition methods using surface Electromyography (sEMG) signals require designers to use digital signal processing hardware or ensemble methods as tools to solve real time hand gesture classification. These ways are easy to result in complicated computation models, inconvenience of circuit connection and lower online recognition rate. Therefore it is imperative to have good methods which can avoid the problems mentioned above as more as possible. An online hand gesture recognition model by using Flexible Neural Trees (FNT) and based on sEMG signals is proposed in this paper. The sEMG is easy to record electrical activity of superficial muscles from the skin surface which has applied in many fields of treatment and rehabilitation. The FNT model can be created using the existing or modified tree- structure- based approaches and the parameters are optimized by the PSO algorithm. The results indicate that the model is able to classify six different hand gestures up to 97.46% accuracy in real time.
机译:使用表面肌电图(sEMG)信号的常规手势识别方法要求设计人员使用数字信号处理硬件或整体方法作为解决实时手势分类的工具。这些方法容易导致复杂的计算模型,电路连接的不便和较低的在线识别率。因此,必须有一种好的方法,可以尽可能地避免上述问题。提出了一种基于柔性神经树的基于sEMG信号的在线手势识别模型。 sEMG易于从皮肤表面记录浅层肌肉的电活动,这已应用于许多治疗和康复领域。可以使用现有的或修改的基于树结构的方法来创建FNT模型,并通过PSO算法对参数进行优化。结果表明,该模型能够实时对六种不同的手势进行分类,准确率高达97.46%。

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