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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Robust 3D Human Pose Estimation from Single Images or Video Sequences
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Robust 3D Human Pose Estimation from Single Images or Video Sequences

机译:从单个图像或视频序列的强大3D人类姿态估计

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摘要

We propose a method for estimating 3D human poses from single images or video sequences. The task is challenging because: (a) many 3D poses can have similar 2D pose projections which makes the lifting ambiguous, and (b) current 2D joint detectors are not accurate which can cause big errors in 3D estimates. We represent 3D poses by a sparse combination of bases which encode structural pose priors to reduce the lifting ambiguity. This prior is strengthened by adding limb length constraints. We estimate the 3D pose by minimizing an L-1 norm measurement error between the 2D pose and the 3D pose because it is less sensitive to inaccurate 2D poses. We modify our algorithm to output K 3D pose candidates for an image, and for videos, we impose a temporal smoothness constraint to select the best sequence of 3D poses from the candidates. We demonstrate good results on 3D pose estimation from static images and improved performance by selecting the best 3D pose from the K proposals. Our results on video sequences also show improvements (over static images) of roughly 15%.
机译:我们提出了一种从单个图像或视频序列估计3D人类姿势的方法。该任务是具有挑战性的,因为:(a)许多3D姿势可以具有类似的2D姿势投影,使得提升模糊,并且(B)电流2D接头检测器不准确,这可能导致3D估计中的大错误。我们代表3D通过稀疏组合的碱基组合,它们编码结构姿势前沿以减少提升歧义。通过添加肢体长度约束来加强该之前。通过最小化2D姿势和3D姿势之间的L-1规范测量误差来估计3D姿势,因为它对不准确的2D姿势不太敏感。我们修改了我们的算法来输出图像的K 3D姿势候选,以及视频,我们强加了时间平滑度约束,以选择来自候选者的最佳3D姿势序列。我们通过从K提案中选择最佳的3D姿势,展示了静态图像的3D姿态估计的良好结果。我们的视频序列的结果还显示出大约15%的改进(静态图像)。

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