论文标题

从极化图像重建3D人类形状

3D Human Shape Reconstruction from a Polarization Image

论文作者

Zou, Shihao, Zuo, Xinxin, Qian, Yiming, Wang, Sen, Xu, Chi, Gong, Minglun, Cheng, Li

论文摘要

本文解决了从单极化的2D图像(即极化图像)估算穿着人体的3D身体形状的问题。已知偏振图像能够捕获偏振的反射灯,以保留物体的丰富几何形状提示,这激发了其最近在重建感兴趣对象的表面正常状态时的应用。受单色图像的最新进展估计的启发,在本文中,我们试图通过利用单个极化图像的几何线索来估算人体形状。提出了一种专用的两阶段深度学习方法SFP:鉴于极化图像,第一阶段旨在推断被罚款的详细体表面正常;第二阶段的齿轮重建服装细节的3D身体形状。对合成数据集(超现实)以及现实世界数据集(PHSPD)的经验评估证明了我们方法在估计人类姿势和形状时的定性和定量性能。这表明极化摄像机是对人形估计的更常规颜色或深度成像的有希望的替代品。此外,从极化成像推断出的正常地图在准确恢复服装人员的身体形状方面起着重要作用。

This paper tackles the problem of estimating 3D body shape of clothed humans from single polarized 2D images, i.e. polarization images. Polarization images are known to be able to capture polarized reflected lights that preserve rich geometric cues of an object, which has motivated its recent applications in reconstructing surface normal of the objects of interest. Inspired by the recent advances in human shape estimation from single color images, in this paper, we attempt at estimating human body shapes by leveraging the geometric cues from single polarization images. A dedicated two-stage deep learning approach, SfP, is proposed: given a polarization image, stage one aims at inferring the fined-detailed body surface normal; stage two gears to reconstruct the 3D body shape of clothing details. Empirical evaluations on a synthetic dataset (SURREAL) as well as a real-world dataset (PHSPD) demonstrate the qualitative and quantitative performance of our approach in estimating human poses and shapes. This indicates polarization camera is a promising alternative to the more conventional color or depth imaging for human shape estimation. Further, normal maps inferred from polarization imaging play a significant role in accurately recovering the body shapes of clothed people.

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