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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >A multi-branch hand pose estimation network with joint-wise feature extraction and fusion
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A multi-branch hand pose estimation network with joint-wise feature extraction and fusion

机译:具有联合特征提取和融合的多分支手姿势估计网络

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摘要

The study of 3D hand pose estimation from a single depth image is regarded as a detection-based or regression-based problem among most of the existing deep learning-based methods, and this approach does not fully exploit the geometry of the hand, such as its structural and physical constraints. To overcome these weaknesses, we design a network with three simple parallel branches that correspond to the three functional parts of the hand. This observation is motivated by the biological viewpoint that each finger plays a different role in performing grasping and manipulation. In each branch, we perform a more detailed regression in two stages - top-down joint location regression followed by bottom-up hand pose regression - which fully exploits both the local and global structure of a hand. Finally, we further make use of the hand structure and physical constraints to refine each joint by its auxiliary points. The proposed network is a unified structure and function model that is more appropriate for hand pose estimation. Our system does not require pose pre-processing or feedback since it can directly perform training and predicting from end-to-end. The experimental results on three public datasets demonstrate that the proposed system achieves performance comparable to state-of-the-art methods.
机译:从单个深度图像的3D手姿势估计的研究被认为是基于深度学习的大多数基于深度学习的方法中的基于检测的或基于回归的问题,并且这种方法没有完全利用手的几何形状,例如它的结构和物理限制。为了克服这些弱点,我们设计一个具有三个简单的平行分支的网络,所述分支对应于手的三个功能部件。这种观察是通过生物学观点的激励,即每个手指在执行抓握和操纵方面发挥着不同的作用。在每个分支中,我们在两个阶段执行更详细的回归 - 自上而下的关节位置回归,然后是自下而上的手工姿势回归 - 这完全利用了手的本地和全局结构。最后,我们进一步利用了手工结构和物理约束来通过其辅助点改进每个接头。所提出的网络是一个统一的结构和功能模型,更适合于手姿势估计。我们的系统不需要姿势预处理或反馈,因为它可以直接执行培训和预测端到端。在三个公共数据集上的实验结果表明,所提出的系统实现了与最先进的方法相当的性能。

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