用于自然人机交互的实时连续手势识别

Ying Yin, Randall Davis
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引用次数: 35

摘要

我们的实时连续手势识别系统解决了以前被忽视的问题:处理以不同路径为特征的手势和以不同手势为特征的手势;并确定系统应该如何以及何时响应手势。我们基于隐马尔可夫模型(hmm)的概率识别框架将两种形式的手势识别统一起来。利用隐马尔可夫模型中隐藏状态的信息,我们可以识别不同的手势阶段:笔划前阶段、核阶段和笔划后阶段。这使得系统可以对需要离散响应和需要连续响应的手势做出适当的响应。我们的系统是可扩展的:在短短几分钟内,用户可以通过给出几个例子来定义自己的手势,而不是编写代码。我们还收集了一个包含两种形式手势的新的手势数据集,并提出了一个新的混合性能指标来评估实时交互的手势识别方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time continuous gesture recognition for natural human-computer interaction
Our real-time continuous gesture recognition system addresses problems that have previously been neglected: handling both gestures that are characterized by distinct paths and gestures characterized by distinct hand poses; and determining how and when the system should respond to gestures. Our probabilistic recognition framework based on hidden Markov models (HMMs) unifies the recognition of the two forms of gestures. Using information from the hidden states in the HMM, we can identify different gesture phases: the pre-stroke, the nucleus and the post-stroke phases. This allows the system to respond appropriately to both gestures that require a discrete response and those needing a continuous response. Our system is extensible: in only a few minutes, users can define their own gestures by giving a few examples rather than writing code. We also collected a new gesture dataset that contains the two forms of gestures, and propose a new hybrid performance metric for evaluating gesture recognition methods for real-time interaction.
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