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Combining discriminative and model based approaches for hand pose estimation

机译:结合基于判别和模型的方法进行手势估计

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In this paper we present an approach to hand pose estimation that combines both discriminative and modelbased methods to overcome the limitations of each technique in isolation. A Randomised Decision Forests (RDF) is used to provide an initial estimate of the regions of the hand. This initial segmentation provides constraints to which a 3D model is fitted using Rigid Body Dynamics. Model fitting is guided using point to surface constraints which bind a kinematic model of the hand to the depth cloud using the segmentation of the discriminative approach. This combines the advantages of both techniques, reducing the training requirements for discriminative classification and simplifying the optimization process involved in model fitting by incorporating physical constraints from the segmentation. Our experiments on two challenging sequences show that this combined method outperforms the current state-of-the-art approach.
机译:在本文中,我们提出了一种手势估计的方法,该方法结合了判别方法和基于模型的方法,以克服每种技术的局限性。随机决策森林(RDF)用于提供手部区域的初始估计。此初始分割提供了使用“刚体动力学”将3D模型拟合到的约束。使用点到表面约束来指导模型拟合,该约束使用判别方法的分割将手的运动学模型绑定到深度云。这结合了这两种技术的优点,减少了对区分性分类的训练要求,并通过合并来自分段的物理约束简化了模型拟合中涉及的优化过程。我们在两个具有挑战性的序列上进行的实验表明,这种组合方法优于当前的最新方法。

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