OASIS:野外单图像3D的大规模数据集

Weifeng Chen, Shengyi Qian, David Fan, Noriyuki Kojima, Max Hamilton, Jia Deng
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引用次数: 35

摘要

单视图3D是从单个图像中恢复3D属性,如深度和表面法线的任务。我们假设单图像3D的主要障碍是数据。我们通过提供单幅图像表面的开放注释(OASIS)来解决这个问题,OASIS是一个野外单幅图像3D数据集,由14万幅图像的详细3D几何形状的注释组成。我们在各种单图像3D任务上训练和评估领先的模型。我们期望OASIS能成为3D视觉研究的有用资源。项目网址:https://pvl.cs.princeton.edu/OASIS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OASIS: A Large-Scale Dataset for Single Image 3D in the Wild
Single-view 3D is the task of recovering 3D properties such as depth and surface normals from a single image. We hypothesize that a major obstacle to single-image 3D is data. We address this issue by presenting Open Annotations of Single Image Surfaces (OASIS), a dataset for single-image 3D in the wild consisting of annotations of detailed 3D geometry for 140,000 images. We train and evaluate leading models on a variety of single-image 3D tasks. We expect OASIS to be a useful resource for 3D vision research. Project site: https://pvl.cs.princeton.edu/OASIS.
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