Automatic handwriting gestures recognition using hidden Markov models

Jérôme Martin, Jean-Baptiste Durand
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引用次数: 32

Abstract

Hidden Markov models have been successfully employed in speech recognition and, more recently, in sign language interpretation. They seem adequate for visual recognition of gestures. In this paper, two problems often eluded are considered. We propose to use the Bayesian information criterion in order to determine the optimal number of model states. We describe the contribution of continuous models in opposition to symbolic ones. Experiments on handwriting gestures show recognition rate between 88% and 100%.
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使用隐马尔可夫模型的自动手写手势识别
隐马尔可夫模型已经成功地应用于语音识别,最近又应用于手语解释。它们似乎足以对手势进行视觉识别。本文考虑了两个常被忽略的问题。我们建议使用贝叶斯信息准则来确定模型状态的最优数量。我们描述了连续模型对符号模型的贡献。手写手势的实验表明识别率在88%到100%之间。
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