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Predicting 3D People from 2D Pictures

机译:从2D图片预测3D人

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摘要

We propose a hierarchical process for inferring the 3D pose of a person from monocular images. First we infer a learned view-based 2D body model from a single image using non-parametric belief propagation. This approach integrates information from bottom-up body-part proposal processes and deals with self-occlusion to compute distributions over limb poses. Then, we exploit a learned Mixture of Experts model to infer a distribution of 3D poses conditioned on 2D poses. This approach is more general than recent work on inferring 3D pose directly from silhouettes since the 2D body model provides a richer representation that includes the 2D joint angles and the poses of limbs that may be unobserved in the silhouette. We demonstrate the method in a laboratory setting where we evaluate the accuracy of the 3D poses against ground truth data. We also estimate 3D body pose in a monocular image sequence. The resulting 3D estimates are sufficiently accurate to serve as proposals for the Bayesian inference of 3D human motion over time.
机译:我们提出了一种从单眼图像中推断一个人的3D姿势的分层过程。首先,我们使用非参数信念传播从单个图像中推断出一个基于学习的基于视图的2D人体模型。这种方法整合了自下而上的身体部位提议过程中的信息,并处理了自我遮挡,以计算肢体姿势的分布。然后,我们利用学习的专家混合模型来推断以2D姿势为条件的3D姿势的分布。这种方法比直接从轮廓推断3D姿势的最新工作更为通用,因为2D人体模型提供了更丰富的表示形式,其中包括2D关节角度和在轮廓中可能无法观察到的四肢姿势。我们在实验室环境中演示了该方法,在该环境中,我们根据地面真实数据评估了3D姿势的准确性。我们还估计了单眼图像序列中的3D人体姿势。所得的3D估计值足够准确,可以用作随时间推移进行3D人体运动的贝叶斯推断的建议。

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