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Gestures vs. Gesticulations: Change Point Models Based Segmentation for Natural Interactions

机译:手势与手势:基于更改点模型的自然互动细分

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Using gestures for natural interactions in virtual environments require robust and smart recognition systems. In these contexts, gestures and gesticulations are part of the a continuous information stream: the first are sufficient to convey meaningful information such as commands and indications. On the contrary, gesticulations are unconscious body movements performed mainly, to support speech. In the majority of gestures recognition systems, the implicit assumption of "isolated patterns" is made. Indeed, following the Kendon's morpho-kinetics model, a gesture is the part of the armmovement contained between the pre-stroke and the post-stroke. This strong assumption shifts the recognition problem toward a clustering issue, e.g., recognizing an isolated temporal pattern. From the practical point of view, the isolated gestures hypothesis needs a cooperation from the user and the later should emphasize the pre and the post strokes. This removes the naturalness of the targeted interface. In this contribution, we focus on having a strong segmentation technique that clusters the body movements into consistent sequences. In this paper, we present a non-parametric stochastic segmentation algorithm that is able to cluster the continuous time series representing body movements into gestures and non-gestures segments. We show as well how this technique allows any novice user creating in a semi-supervised way, his or her, own gestures library. The proposed system is assessed through a real-life example, where a novice user creates an adhoc interface to control an artificial agent in a natural way.
机译:在虚拟环境中使用手势进行自然交互需要强大而智能的识别系统。在这些情况下,手势和手势是连续信息流的一部分:第一个足以传达有意义的信息,例如命令和指示。相反,手势是主要为了支持语音而进行的无意识身体运动。在大多数手势识别系统中,都对“孤立模式”进行了隐式假设。的确,遵循肯登的形态动力学模型,手势是中风前和中风后手臂运动的一部分。这种强有力的假设将识别问题转向聚类问题,例如,识别孤立的时间模式。从实际的角度来看,孤立的手势假设需要用户的配合,而后者应强调前后笔触。这消除了目标界面的自然性。在此贡献中,我们专注于采用强大的分割技术,将身体运动聚集成一致的序列。在本文中,我们提出了一种非参数随机分割算法,该算法能够将代表身体运动的连续时间序列聚类为手势和非手势段。我们还将展示该技术如何允许任何新手用户以半监督方式创建自己的手势库。所提出的系统是通过一个真实的示例进行评估的,在该示例中,新手用户创建了一个自组织界面以自然方式控制人工代理。

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