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Fast Invariant Contour-Based Classification of Hand Symbols for HCI

机译:基于快速不变轮廓的HCI手形符号分类

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Video-based recognition of hand symbols is a promising technology for designing new interaction techniques for multi-user environments of the future. However, most approaches still lack performance for direct application for human-computer interaction (HCI). In this paper we propose a novel approach to contour-based recognition of hand symbols for HCI. We present adequate methods for normalization and representation of signatures extracted from boundary contours, which allow for efficient recognition of hand poses invariant to translation, rotation, scale and viewpoint variations, which are relevant for many applications in HCI. The developed classification system is evaluated on a dataset containing 13 hand symbols captured from four different persons.
机译:基于视频的手势识别是一种有前途的技术,可为未来的多用户环境设计新的交互技术。但是,大多数方法仍然缺乏直接应用于人机交互(HCI)的性能。在本文中,我们提出了一种新颖的方法来基于轮廓识别人机交互的手形符号。我们提供了从边界轮廓提取的签名的归一化和表示的适当方法,这些方法可以有效识别不依赖于平移,旋转,缩放和视点变化的手势,这些手势对于HCI中的许多应用都是重要的。在包含从四个不同人物捕获的13个手形符号的数据集上评估开发的分类系统。

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