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首页> 外文期刊>ACM Transactions on Graphics >Online Optical Marker-based Hand Tracking with Deep Labels
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Online Optical Marker-based Hand Tracking with Deep Labels

机译:基于在线光学标记的带有深标签的手部跟踪

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摘要

Optical marker-based motion capture is the dominant way for obtaining high-fidelity human body animation for special effects, movies, and video games. However, motion capture has seen limited application to the human hand due to the difficulty of automatically identifying (or labeling) identical markers on self-similar fingers. We propose a technique that frames the labeling problem as a keypoint regression problem conducive to a solution using convolutional neural networks. We demonstrate robustness of our labeling solution to occlusion, ghost markers, hand shape, and even motions involving two hands or handheld objects. Our technique is equally applicable to sparse or dense marker sets and can run in real-time to support interaction prototyping with high-fidelity hand tracking and hand presence in virtual reality.
机译:基于光学标记的运动捕捉是获取用于特效,电影和视频游戏的高保真人体动画的主要方法。但是,由于难以自动识别(或标记)自相似手指上的相同标记,因此运动捕获在人手上的应用受到了限制。我们提出了一种将标签问题框架化为关键点回归问题的技术,该问题有助于使用卷积神经网络解决方案。我们证明了我们的标签解决方案对于遮挡,重影标记,手形甚至涉及两只手或手持对象的运动的鲁棒性。我们的技术同样适用于稀疏或密集的标记集,并且可以实时运行以支持高逼真手部追踪和虚拟现实中手部存在的交互原型。

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