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Analysis of composite gestures with a coherent probabilistic graphical model

机译:使用相干概率图形模型分析复合手势

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Traditionally, gesture-based interaction in virtual environments is composed of either static, posture-based gesture primitives or temporally analyzed dynamic primitives. However, it would be ideal to incorporate both static and dynamic gestures to fully utilize the potential of gesture-based interaction. To that end, we propose a probabilistic framework that incorporates both static and dynamic gesture primitives. We call these primitives Gesture Words (GWords). Using a probabilistic graphical model (PGM), we integrate these heterogeneous GWords and a high-level language model in a coherent fashion. Composite gestures are represented as stochastic paths through the PGM. A gesture is analyzed by finding the path that maximizes the likelihood on the PGM with respect to the video sequence. To facilitate online computation, we propose a greedy algorithm for performing inference on the PGM. The parameters of the PGM can be learned via three different methods: supervised, unsupervised, and hybrid. We have implemented the PGM model for a gesture set of ten GWords with six composite gestures. The experimental results show that the PGM can accurately recognize composite gestures.
机译:传统上,虚拟环境中基于手势的交互由静态,基于姿势的手势图元或经过时间分析的动态图元组成。但是,理想的是将静态和动态手势结合起来以充分利用基于手势的交互的潜力。为此,我们提出了一个概率框架,该框架结合了静态和动态手势原语。我们称这些原语为手势词(GWords)。使用概率图形模型(PGM),我们以连贯的方式集成了这些异构的GWords和高级语言模型。复合手势表示为通过PGM的随机路径。通过找到相对于视频序列最大化PGM可能性的路径来分析手势。为了方便在线计算,我们提出了一种贪婪算法,用于对PGM进行推理。可以通过三种不同的方法来学习PGM的参数:有监督,无监督和混合。我们已经为包含六个复合手势的十个GWord的手势集实现了PGM模型。实验结果表明,PGM可以准确识别复合手势。

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