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Mo2Cap2: Real-time Mobile 3D Motion Capture with a Cap-mounted Fisheye Camera

机译:<斜体> Mo 2 帽 2 :实时移动3d mo tion capture <斜视>帽子 -mounted鱼眼相机

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We propose the first real-time system for the egocentric estimation of 3D human body pose in a wide range of unconstrained everyday activities. This setting has a unique set of challenges, such as mobility of the hardware setup, and robustness to long capture sessions with fast recovery from tracking failures. We tackle these challenges based on a novel lightweight setup that converts a standard baseball cap to a device for high-quality pose estimation based on a single cap-mounted fisheye camera. From the captured egocentric live stream, our CNN based 3D pose estimation approach runs at 60 Hz on a consumer-level GPU. In addition to the lightweight hardware setup, our other main contributions are: 1) a large ground truth training corpus of top-down fisheye images and 2) a disentangled 3D pose estimation approach that takes the unique properties of the egocentric viewpoint into account. As shown by our evaluation, we achieve lower 3D joint error as well as better 2D overlay than the existing baselines.
机译:我们提出了第一个实时系统,用于在广泛的无约会日常活动中的3D人体姿势的Enocentric估计。此设置具有一组唯一的挑战,例如硬件设置的移动性,以及长期捕获会话的鲁棒性,从跟踪故障恢复快速恢复。我们基于新颖的轻量级设置来解决这些挑战,该挑战将标准棒球帽转换为基于单个盖式Fisheye摄像头的高质量姿态估计设备。从捕获的Enocentric Live Stream,基于CNN的3D姿态估计方法在消费级GPU上以60 Hz运行。除了轻量级硬件设置外,我们的其他主要贡献包括:1)彻底鱼眼图像的大型地面真理培训语料库和2)解开的3D姿势估计方法,占据了Enocentric观点的独特属性。如我们的评估所示,我们实现了较低的3D联合误差以及比现有基线更好的2D覆盖层。

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