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Efficient Multi-person Hierarchical 3D Pose Estimation for Autonomous Driving

机译:用于自动驾驶的高效多人分层3D姿势估计

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With increasing need of analyzing human poses for autonomous driving, multi-person 3D pose estimation using monocular moving camera in real world scenarios is of great concern. Existing 3D human pose estimation features either large scale training data, or high computation complexity due to the high degrees of freedom in 3D human poses. We propose a novel scheme to hierarchically estimate 3D human poses in natural videos by static or moving cameras in an efficient fashion. Our method does not need 3D training data. We formulate torso estimation into a Perspective N Point (PNP) problem, formulate limb pose estimation into an optimization problem, and structure the high dimensional poses to address the challenge efficiently. Experiments show good performance and high efficiency of multi-person 3D pose estimation on real world street scenario videos, resulting in great new opportunities to understand and predict human behaviors for autonomous driving.
机译:随着对用于自动驾驶的人体姿势分析的需求日益增加,在现实世界中使用单眼移动相机进行多人3D姿势估计已成为人们的关注重点。由于3D人体姿势的高度自由度,现有的3D人体姿势估计要么具有大规模训练数据,要么具有较高的计算复杂度。我们提出了一种新颖的方案,可以通过静态或移动相机以有效的方式对自然视频中的3D人体姿势进行分层估计。我们的方法不需要3D训练数据。我们将躯干估计公式化为视角N点(PNP)问题,将肢体姿势估计公式化为优化问题,并构造高维姿势以有效应对挑战。实验表明,在现实世界中的场景视频中,多人3D姿态估计具有良好的性能和高效率,从而为理解和预测自动驾驶的人类行为提供了巨大的新机会。

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