基于Human3.6m数据集的联合回归校正提高人体姿态估计精度的简单方法

Eric Hedlin, Helge Rhodin, K. M. Yi
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引用次数: 3

摘要

许多人体姿态估计方法估计蒙皮多人线性(SMPL)模型,并从这些SMPL估计中回归人体关节。在这项工作中,我们发现最广泛使用的smpl -关节线性层(关节回归器)是不准确的,这可能会误导姿态评估结果。为了获得更准确的联合回归量,我们提出了一种方法来创建伪地真SMPL姿势,然后可以用来训练改进的回归量。具体来说,我们优化了来自最先进方法的SMPL估计,使其投影与场景中人类的轮廓以及地面真实的2D关节位置相匹配。虽然由于缺乏实际的地面真值SMPL,这种伪地面真值的质量很难评估,但使用Human 360万数据集,我们定性地表明,我们的联合位置更准确,我们的回归器在不需要再训练的情况下改善了测试集上的姿态估计结果。我们在https://github.com/ubc-vision/joint-regressor-refinement上发布了代码和联合回归器
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simple Method to Boost Human Pose Estimation Accuracy by Correcting the Joint Regressor for the Human3.6m Dataset
Many human pose estimation methods estimate Skinned Multi-Person Linear (SMPL) models and regress the human joints from these SMPL estimates. In this work, we show that the most widely used SMPL-to-joint linear layer (joint regressor) is inaccurate, which may mislead pose evaluation results. To achieve a more accurate joint regressor, we propose a method to create pseudo-ground-truth SMPL poses, which can then be used to train an improved regressor. Specifically, we optimize SMPL estimates coming from a state-of-the-art method so that its projection matches the silhouettes of humans in the scene, as well as the ground-truth 2D joint locations. While the quality of this pseudo-ground-truth is chal-lenging to assess due to the lack of actual ground-truth SMPL, with the Human 3.6m dataset, we qualitatively show that our joint locations are more accurate and that our regressor leads to improved pose estimations results on the test set without any need for retraining. We release our code and joint regressor at https://github.com/ubc-vision/joint-regressor-refinement
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