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Gesture Modelling and Recognition by Integrating Declarative Models and Pattern Recognition Algorithms

机译:集成声明性模型和模式识别算法的手势建模和识别

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Gesture recognition approaches based on computer vision and machine learning mainly focus on recognition accuracy and robustness. Research on user interface development focuses instead on the orthogonal problem of providing guidance for performing and discovering interactive gestures, through compositional approaches that provide information on gesture sub-parts. We make a first step toward combining the advantages of both approaches. We introduce DEICTIC, a compositional and declarative gesture description model which uses basic Hidden Markov Models (HMMs) to recognize meaningful pre-defined primitives (gesture sub-parts), and uses a composition of basic HMMs to recognize complex gestures. Preliminary empirical results show that DEICTIC exhibits a similar recognition performance as "monolithic" HMMs used in state-of-the-art vision-based approaches, retaining at the same time the advantages of declarative approaches.
机译:基于计算机视觉和机器学习的手势识别方法主要关注识别的准确性和鲁棒性。用户界面开发的研究取而代之的是正交问题,即通过提供有关手势子部分信息的合成方法,为执行和发现交互式手势提供指导。我们朝着结合两种方法的优势迈出了第一步。我们介绍了DEICTIC,这是一种组成式和声明性的手势描述模型,它使用基本的隐马尔可夫模型(HMM)来识别有意义的预定义基元(手势子部分),并使用基本的HMM的组合来识别复杂的手势。初步的经验结果表明,DEICTIC与基于视觉的最新方法中使用的“整体式” HMM表现出相似的识别性能,同时保留了声明性方法的优势。

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