利用三维零件亲和场改进三维人体姿态估计

Ding Liu, Zixu Zhao, Xinchao Wang, Yuxiao Hu, Lei Zhang, Thomas Huang
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引用次数: 9

摘要

基于单眼图像的三维人体姿态估计是近年来计算机视觉领域的一个研究热点。多年来,大多数基于深度神经网络的实践要么采用端到端方法,要么采用两阶段方法。端到端网络通常直接从2D输入图像中估计3D人体姿势,但它受到缺乏3D人体姿势数据的困扰。我们也不知道这种不准确是源于有限的视觉理解还是2d到3d的映射。然而,在利用现有网络进行2D关键点检测之后,两阶段直接将这些2D关键点输出提升到3D空间。然而,它们往往会忽略2D原始图像像素中一些有用的上下文提示。在本文中,我们介绍了一种两阶段架构,它可以消除这两种方法的主要缺点。在第一阶段,我们使用现有的最先进的检测器来估计二维姿势。为了添加更多上下文信息以帮助将2D姿势提升到3D姿势,我们提出了3D零件关联场(3D- paf)。我们使用3D- paf来推断三维肢体向量,并将其与二维姿态相结合来回归三维坐标。我们在最流行的3D人体姿势基准数据集Human3.6M上训练和测试了我们提出的框架。我们的方法达到了最先进的性能,这证明了通过正确选择上下文信息,一个简单的回归模型可以非常强大地估计3D姿势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving 3D Human Pose Estimation Via 3D Part Affinity Fields
3D human pose estimation from monocular images has become a heated area in computer vision recently. For years, most deep neural network based practices have adopted either an end-to-end approach, or a two-stage approach. An end-to-end network typically estimates 3D human poses directly from 2D input images, but it suffers from the shortage of 3D human pose data. It is also obscure to know if the inaccuracy stems from limited visual under-standing or 2D-to-3D mapping. Whereas a two-stage directly lifts those 2D keypoint outputs to the 3D space, after utilizing an existing network for 2D keypoint detections. However, they tend to ignore some useful contextual hints from the 2D raw image pixels. In this paper, we introduce a two-stage architecture that can eliminate the main disadvantages of both these approaches. During the first stage we use an existing state-of-the-art detector to estimate 2D poses. To add more con-textual information to help lifting 2D poses to 3D poses, we propose 3D Part Affinity Fields (3D-PAFs). We use 3D-PAFs to infer 3D limb vectors, and combine them with 2D poses to regress the 3D coordinates. We trained and tested our proposed framework on Human3.6M, the most popular 3D human pose benchmark dataset. Our approach achieves the state-of-the-art performance, which proves that with right selections of contextual information, a simple regression model can be very powerful in estimating 3D poses.
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