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3-D Human Pose Estimation Using Cascade of Multiple Neural Networks

机译:使用多个神经网络的级联进行3D人体姿势估计

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摘要

Estimating three-dimensional (3-D) human poses from a given two-dimensional (2-D) shape is still an inherently ill-posed problem in computer vision. This paper proposes a method called cascade of multiple neural networks (CMNN) to solve this problem in following two steps: 1) create the initial estimated 3-D shape using the Zhou et al. method with a small number of basis shapes and 2) make this initial shape more alike to the original shape by using the CMNN. In comparing to existing works, the proposed method shows a significant outperformance in both accuracy and processing time. This paper also introduces a new system called Human3D that can estimate the 3-D pose of all people in a single RGB image. This system comprises two part: convolution pose machine (CPM) for estimating 2-D poses of all people in an RGB image and CMNN for reconstructing 3-D poses of them from outputs of the CPM.
机译:从给定的二维(2-D)形状估计三维(3-D)人体姿势仍然是计算机视觉中固有的不适姿势问题。本文提出了一种称为多神经网络级联(CMNN)的方法,可通过以下两个步骤解决该问题:1)使用Zhou等人的方法创建初始估计的3-D形状。具有少量基本形状的方法; 2)使用CMNN使该初始形状更类似于原始形状。与现有作品相比,该方法在准确性和处理时间上均表现出明显的优异性能。本文还介绍了一种名为Human3D的新系统,该系统可以估计单个RGB图像中所有人的3-D姿态。该系统包括两部分:用于估计RGB图像中所有人的2-D姿态的卷积姿态机(CPM)和用于从CPM的输出中重构其3-D姿态的CMNN。

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