基于多模态特征的人类手势分析

Dan Luo, H. K. Ekenel, J. Ohya
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引用次数: 6

摘要

人体手势作为一种自然界面,在实现智能人机交互(HCI)中起着至关重要的作用。人类的手势包括视觉动作的不同组成部分,如手部动作、面部表情和躯干,以传达意思。到目前为止,在手势识别领域,以往的工作大多集中在手势的手动成分上。在本文中,我们提出了一个基于外观的多模态手势识别框架,该框架结合了从单个网络摄像机捕获的图像帧中提取的不同组特征,如面部表情特征和手部运动特征。我们参考了美国手语(ASL)中的12类人类面部表情手势,包括中性、消极和积极的含义。我们通过采用两种融合策略将特征组合在两个层次上。在特征层,通过对不同的特征组进行连接和加权来进行早期的特征组合,并使用PLS通过将特征投射到判别表达式空间来选择最具判别性的元素。第二种策略应用于决策层面。来自单一模式的加权决策在稍后阶段融合在一起。采用基于凝聚的分类算法。我们收集了三到七次记录的数据集,并用组合技术进行了实验。实验结果表明,人脸分析提高了手势识别能力,决策级融合优于特征级融合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Gesture Analysis Using Multimodal Features
Human gesture as a natural interface plays an utmost important role for achieving intelligent Human Computer Interaction (HCI). Human gestures include different components of visual actions such as motion of hands, facial expression, and torso, to convey meaning. So far, in the field of gesture recognition, most previous works have focused on the manual component of gestures. In this paper, we present an appearance-based multimodal gesture recognition framework, which combines the different groups of features such as facial expression features and hand motion features which are extracted from image frames captured by a single web camera. We refer 12 classes of human gestures with facial expression including neutral, negative and positive meanings from American Sign Languages (ASL). We combine the features in two levels by employing two fusion strategies. At the feature level, an early feature combination can be performed by concatenating and weighting different feature groups, and PLS is used to choose the most discriminative elements by projecting the feature on a discriminative expression space. The second strategy is applied on decision level. Weighted decisions from single modalities are fused in a later stage. A condensation-based algorithm is adopted for classification. We collected a data set with three to seven recording sessions and conducted experiments with the combination techniques. Experimental results showed that facial analysis improve hand gesture recognition, decision level fusion performs better than feature level fusion.
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