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MeshLifter: Weakly Supervised Approach for 3D Human Mesh Reconstruction from a Single 2D Pose Based on Loop Structure

机译:Meshlifter:基于循环结构的单个2D姿势3D人体网格重建的弱监督方法

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摘要

In this paper, we address the problem of 3D human mesh reconstruction from a single 2D human pose based on deep learning. We propose MeshLifter, a network that estimates a 3D human mesh from an input 2D human pose. Unlike most existing 3D human mesh reconstruction studies that train models using paired 2D and 3D data, we propose a weakly supervised learning method based on a loop structure to train the MeshLifter. The proposed method alleviates the difficulty of obtaining ground-truth 3D data to ensure that the MeshLifter can be trained successfully from a 2D human pose dataset and an unpaired 3D motion capture dataset. We compare the proposed method with recent state-of-the-art studies through various experiments and show that the proposed method achieves effective 3D human mesh reconstruction performance. Notably, our proposed method achieves a reconstruction error of 59.1 mm without using the 3D ground-truth data of Human3.6M, the standard dataset for 3D human mesh reconstruction.
机译:在本文中,我们根据深度学习解决了单一2D人类姿势的3D人体网格重建问题。我们提出了Meshlifter,该网络估计来自输入2D人类姿势的3D人网格。与使用配对2D和3D数据进行培训模型的大多数现有的3D人体网格重建研究,我们提出了一种基于环形结构的弱监督学习方法,以训练Meshlifter。所提出的方法减轻了获得地面真理3D数据的难度,以确保可以从2D人类姿势数据集和未配对的3D运动捕获数据集成功培训。我们通过各种实验比较近期最先进的研究方法,并表明该方法实现了有效的3D人体网格重建性能。值得注意的是,我们所提出的方法实现了59.1毫米的重建误差,而无需使用Human3.6m的3D地理数据,标准数据集进行3D人体网格重建。

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