Modeling and Recognition of Gesture Signals in 2D Space: A Comparison of NN and SVM Approaches

F. Dadgostar, A. Sarrafzadeh, C. Fan, L. D. Silva, C. Messom
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引用次数: 5

Abstract

In this paper we introduce a novel technique for modeling and recognizing gesture signals in 2D space. This technique is based on measuring the direction of the gradient of the movement trajectory as features of the gesture signal. Each gesture signal is represented as a time series of gradient angle values. These features are classified by applying a given classification method. In this article we compared the accuracy of a feed forward artificial neural network with a support vector machine using a radial kernel. The comparison was based on the recorded data of 13 gesture signals as training and testing data. The average accuracy of the ANN and SVM were 98.27% and 96.34% respectively. The false detection ratio was 3.83% for ANN and 8.45% for SVM, which suggests the ANN is more suitable for gesture signal recognition
二维空间手势信号的建模与识别:神经网络与支持向量机方法的比较
本文介绍了一种在二维空间中建模和识别手势信号的新技术。该技术是基于测量运动轨迹梯度的方向作为手势信号的特征。每个手势信号被表示为梯度角值的时间序列。通过应用给定的分类方法对这些特征进行分类。在本文中,我们比较了前馈人工神经网络和使用径向核的支持向量机的精度。对比以13个手势信号的记录数据作为训练和测试数据。ANN和SVM的平均准确率分别为98.27%和96.34%。人工神经网络的误检率为3.83%,支持向量机的误检率为8.45%,表明人工神经网络更适合手势信号的识别
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