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Visual recognition of gestures using dynamic naive Bayesian classifiers

机译:使用动态朴素贝叶斯分类器视觉识别手势

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摘要

Visual recognition of gestures is an important field of study in human-robot interaction research. Although there exist several approaches in order to recognize gestures, on-line learning of visual gestures does not have received the same special attention. For teaching a new gesture, a recognition model that can be trained with just a few examples is required. In this paper we propose an extension to naive Bayesian classifiers for gesture recognition that we call dynamic naive Bayesian classifiers. The observation variables in these combine motion and posture information of the user's right hand. We tested the model with a set of gestures for commanding a mobile robot, and compare it with hidden Markov models. When the number of training samples is high, the recognition rate is similar with both types of models; but when the number of training samples is low, dynamic naive classifiers have a better performance. We also show that the inclusion of posture attributes in the form of spatial relationships between the right hand and other parts of the human body improves the recognition rate in a significant way.
机译:姿态的视觉识别是人机交互研究中的重要研究领域。虽然存在几种方法以识别手势,但是在线学习视觉手势并没有得到相同的特别关注。为了教授一个新的手势,需要一个可以在几个例子中培训的识别模型。在本文中,我们向Naive Bayesian分类器提出了一个令人兴奋的贝叶斯分类器,我们称呼动态天真贝叶斯级分类器。这些组合的观测变量和用户右手的姿势信息。我们用一组手势测试了模型,用于命令移动机器人,并将其与隐藏的马尔可夫模型进行比较。当训练样本的数量很高时,识别率与两种类型的模型相似;但是当训练样本的数量低时,动态天真的分类器具有更好的性能。我们还表明,以右手和人体的其他部分之间的空间关系形式包含姿势属性以显着的方式提高了识别率。

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