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DUST: Dual Union of Spatio-Temporal Subspaces for Monocular Multiple Object 3D Reconstruction

机译:DUST:时空子空间的双联合,用于单眼多对象3D重建

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We present an approach to reconstruct the 3D shape of multiple deforming objects from incomplete 2D trajectories acquired by a single camera. Additionally, we simultaneously provide spatial segmentation (i.e., we identify each of the objects in every frame) and temporal clustering (i.e., we split the sequence into primitive actions). This advances existing work, which only tackled the problem for one single object and non-occluded tracks. In order to handle several objects at a time from partial observations, we model point trajectories as a union of spatial and temporal subspaces, and optimize the parameters of both modalities, the non-observed point tracks and the 3D shape via augmented Lagrange multipliers. The algorithm is fully unsupervised and results in a formulation which does not need initialization. We thoroughly validate the method on challenging scenarios with several human subjects performing different activities which involve complex motions and close interaction. We show our approach achieves state-of-the-art 3D reconstruction results, while it also provides spatial and temporal segmentation.
机译:我们提出一种从单个摄像机获取的不完整2D轨迹重建多个变形对象的3D形状的方法。此外,我们同时提供了空间分割(即,我们在每个帧中标识了每个对象)和时间聚类(即,将序列分为原始动作)。这推进了现有工作,仅解决了单个对象和无遮挡轨道的问题。为了从局部观测一次处理多个对象,我们将点轨迹建模为空间和时间子空间的并集,并通过增强的Lagrange乘数优化这两种模态,非观测点轨迹和3D形状的参数。该算法是完全不受监督的,并导致不需要初始化的公式。我们在具有挑战性的场景上彻底验证了该方法,该方法具有多个人类受试者执行涉及复杂动作和紧密交互作用的不同活动。我们展示了我们的方法可以实现最新的3D重建结果,同时还可以提供空间和时间上的分割。

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