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Hierarchical neural network for hand pose estimation

机译:用于手姿势估计的分层神经网络

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摘要

Hand pose estimation plays an important role in human-computer interaction and augmented reality. Regressing the joints coordinates is a difficult task due to the flexibility of the joint, self-occlusion and so on. In this paper, we propose a novel and simple hierarchical neural network for hand pose estimation. The hand joint coordinates are divided into six parts and each part is regressed in sequence with this hierarchical architecture. This can divide the complex task of regressing all hand joints coordinates into several sub-tasks which can make the estimation more accurate. When regress the joint coordinates of one part, the features of other parts may bring negative influence to this part due to the similarity among the fingers, so we use an interference cancellation operation in our hierarchical architecture. At the time the joint coordinates of one part are regressed, the corresponding features will be removed from the hand global feature to eliminate the interference of this part. The obtained features will be used as input for regressing the joints coordinates of the next part. The ablation study verifies the effectiveness of our hierarchical architecture. The experimental results demonstrate that our method can achieve state-of-the-art or comparable results relative to existing methods on four public hand pose datasets.
机译:手姿势估计在人机互动和增强现实中起着重要作用。回归关节坐标是由于关节,自动阻塞等灵活性的困难任务。在本文中,我们提出了一种用于手姿势估计的新颖和简单的分层神经网络。手关节坐标分为六个部分,每个部分都以这种层级架构顺序回归。这可以划分回归所有手表坐标的复杂任务分为几个子任务,这可以使估计更准确。当一个部分的关节坐标进行回归时,由于手指之间的相似性,其他部件的特征可能对该部分带来负面影响,因此我们在分层体系结构中使用干扰消除操作。在回归一个部分的关节坐标时,将从手动全局特征中移除相应的特征以消除该部分的干扰。所获得的功能将用作回归下一部分的关节坐标的输入。消融研究验证了我们分层架构的有效性。实验结果表明,我们的方法可以相对于四个公共手姿势数据集的现有方法实现最先进的或可比结果。

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