手势识别技术在手写识别中的应用

Feng-Jun Guo, Shijie Chen
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引用次数: 11

摘要

手写体手势识别在手写体输入中得到了广泛的应用。手势通常用于进行编辑操作或设置为应用程序的快捷方式。在本文中,我们比较了几种手写手势识别方法,并解决了它们不同的用户用例。这些方法包括像素匹配方法、基于规则的方法和基于判别函数的方法。对于基于判别函数的方法,我们描述了2个子方法。它们是基于原型的方法和基于训练的方法。我们不仅分析了这些方法对手势的识别精度,还分析了它们在同一识别模式下对手势和字母数字的识别能力。实验结果表明,在手势样本足够的情况下,基于训练的方法可以达到最高的准确率。此外,当识别手势和其他手写符号的混合输入时,基于训练的方法几乎不降低这些符号的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gesture Recognition Techniques in Handwriting Recognition Application
Handwriting-gesture recognition has been widely implemented in handwriting input application. Usually, gestures are used to conduct edit operations or be set as short-cut of an application. In this paper, we compare several handwriting-gesture recognition methods, and address their different user cases. These methods include pixel-matching method, rule based method and discriminant-function based method. For discriminant-function based method, we describe 2 sub-methods. They are prototypes based method and training based method. We not only analyze recognition accuracy of gestures for these methods, but also analyze their distinguished capability when recognizing gestures and alphanumeric in same recognizing mode. Experiments results show that, if the gesture-samples are enough, training based method achieves the highest accuracy. Furthermore, when recognizing mixed input of gestures and other handwriting symbols, training based method almost doesn’t degrade accuracy of these symbols.
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