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AN ACTION-TUNED NEURAL NETWORK ARCHITECTURE FOR HAND POSE ESTIMATION

机译:用于手姿势估计的动作调谐神经网络架构

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There is a growing interest in developing computational models of grasping action recognition. This interest is increasingly motivated by a wide range of applications in robotics, neuroscience, HCI, motion capture and other research areas. In many cases, a vision-based approach to grasping action recognition appears to be more promising. For example, in HCI and robotic applications, such an approach often allows for simpler and more natural interaction. However, a vision-based approach to grasping action recognition is a challenging problem due to the large number of hand self-occlusions which make the mapping from hand visual appearance to the hand pose an inverse ill-posed problem. The approach proposed here builds on the work of Santello and co-workers which demonstrate a reduction in hand variability within a given class of grasping actions. The proposed neural network architecture introduces specialized modules for each class of grasping actions and viewpoints, allowing for a more robust hand pose estimation. A quantitative analysis of the proposed architecture obtained by working on a synthetic data set is presented and discussed as a basis for further work.
机译:在开发抓握动作识别的计算模型上存在越来越兴趣。这种兴趣越来越多地通过机器人,神经科学,HCI,运动捕获和其他研究领域的广泛应用程序产生动机。在许多情况下,基于视觉的抓握行动识别的方法似乎更有前景。例如,在HCI和机器人应用中,这种方法通常允许更简单和更自然的相互作用。然而,由于大量的手自咬合,基于视觉的抓住动作识别的方法是一种具有挑战性的问题,这使得从手视觉外观到手姿势的映射造成逆存在的问题。此处提出的方法建立在Santello和同事的工作,这在给定类抓握行动中表现出减少的手动变化。所提出的神经网络架构为每种掌握动作和观点介绍了专用模块,允许更强大的手姿势估计。提出并讨论了通过处理合成数据集获得的所提出的架构的定量分析,作为进一步工作的基础。

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