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Mobile. Egocentric Human Body Motion Reconstruction Using Only Eyeglasses-mounted Cameras and a Few Body-worn Inertial Sensors

机译:移动的。 仅使用眼镜安装的摄像头和一些车身磨损的惯性传感器进行EGoCentric人体运动重建

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We envision a convenient telepresence system available to users anywhere, anytime. Such a system requires displays and sensors embedded in commonly worn items such as eyeglasses, wristwatches, and shoes. To that end, we present a standalone real-time system for the dynamic 3D capture of a person, relying only on cameras embedded into a head-worn device, and on Inertial Measurement Units (IMUs) worn on the wrists and ankles. Our prototype system egocentrically reconstructs the wearer's motion via learning-based pose estimation, which fuses inputs from visual and inertial sensors that complement each other, overcoming challenges such as inconsistent limb visibility in head-worn views, as well as pose ambiguity from sparse IMUs. The estimated pose is continuously re-targeted to a prescanned surface model, resulting in a high-fidelity 3D reconstruction. We demonstrate our system by reconstructing various human body movements and show that our visual-inertial learning-based method, which runs in real time, outperforms both visual-only and inertial-only approaches. We captured an egocentric visual-inertial 3D human pose dataset publicly available at https://sites.google.com/site/youngwooncha/egovip for training and evaluating similar methods.
机译:我们可以随时随地为用户提供便利的远程呈现系统。这种系统需要嵌入常用物品的显示和传感器,例如眼镜,手表和鞋子。为此,我们为一个人的动态3D捕获提供了一个独立的实时系统,仅依赖于嵌入头部磨损设备的摄像机,以及在手腕和脚踝上佩戴的惯性测量单元(IMU)。我们的原型系统通过基于学习的姿态估计重建佩戴者的运动,该姿势估计融合来自彼此相互补充的视觉和惯性传感器的输入,克服了头部磨损视图中不一致的肢体可见度等挑战,以及来自稀疏IMU的姿势模糊。估计的姿势是连续重新瞄准预扫描表面模型,导致高保真3D重建。我们通过重建各种人体运动来展示我们的系统,并表明我们实时运行的基于视觉惯性学习的方法,优于视觉上和惯性惯性方法。我们捕获了一个在HTTPS://SITES.Google.com/site/youngwooncha/egovip上公开提供的Egocentric视觉惯性3D人类姿势数据集进行培训和评估类似方法。

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