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Spatial Attention Deep Net with Partial PSO for Hierarchical Hybrid Hand Pose Estimation

机译:具有部分PSO的空间注意力深层网络用于分层混合手部姿势估计

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Discriminative methods often generate hand poses kinemati-cally implausible, then generative methods are used to correct (or verify) these results in a hybrid method. Estimating 3D hand pose in a hierarchy, where the high-dimensional output space is decomposed into smaller ones, has been shown effective. Existing hierarchical methods mainly focus on the decomposition of the output space while the input space remains almost the same along the hierarchy. In this paper, a hybrid hand pose estimation method is proposed by applying the kinematic hierarchy strategy to the input space (as well as the output space) of the discriminative method by a spatial attention mechanism and to the optimization of the generative method by hierarchical Particle Swarm Optimization (PSO). The spatial attention mechanism integrates cascaded and hierarchical regression into a CNN framework by transforming both the input (and feature space) and the output space, which greatly reduces the viewpoint and articulation variations. Between the levels in the hierarchy, the hierarchical PSO forces the kinematic constraints to the results of the CNNs. The experimental results show that our method significantly outperforms four state-of-the-art methods and three baselines on three public benchmarks.
机译:判别方法通常会在运动上产生难以置信的手势,然后将生成方法用于混合方法中纠正(或验证)这些结果。在高层次的输出空间分解成较小的空间的层次结构中估计3D手势已被证明是有效的。现有的分层方法主要集中在输出空间的分解上,而输入空间沿分层结构几乎保持不变。本文提出了一种混合手势姿态估计方法,该方法通过将运动学分层策略通过空间注意机制应用于判别方法的输入空间(以及输出空间),并通过分层粒子对生成方法的优化进行应用群优化(PSO)。空间注意力机制通过转换输入(和特征空间)和输出空间,将级联和分层回归集成到CNN框架中,从而极大地减少了视点和清晰度变化。在层次结构的各个级别之间,层次结构的PSO将运动学约束施加到CNN的结果上。实验结果表明,我们的方法在三个公共基准上明显优于四个最新方法和三个基准。

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