Learning 3D Object Shape and Layout without 3D Supervision

Georgia Gkioxari, Nikhila Ravi, Justin Johnson
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引用次数: 9

Abstract

A 3D scene consists of a set of objects, each with a shape and a layout giving their position in space. Understanding 3D scenes from 2D images is an important goal, with ap-plications in robotics and graphics. While there have been recent advances in predicting 3D shape and layout from a single image, most approaches rely on 3D ground truth for training which is expensive to collect at scale. We overcome these limitations and propose a method that learns to predict 3D shape and layout for objects without any ground truth shape or layout information: instead we rely on multi-view images with 2D supervision which can more easily be col-lected at scale. Through extensive experiments on ShapeNet, Hypersim, and ScanNet we demonstrate that our approach scales to large datasets of realistic images, and compares favorably to methods relying on 3D ground truth. On Hy-persim and ScanNet where reliable 3D ground truth is not available, our approach outperforms supervised approaches trained on smaller and less diverse datasets.11Project page https://gkioxari.github.io/usl/
学习3D对象形状和布局没有3D监督
3D场景由一组对象组成,每个对象都有一个形状和一个布局,给出了它们在空间中的位置。从2D图像中理解3D场景是一个重要的目标,在机器人和图形学方面有应用。虽然最近在从单个图像预测3D形状和布局方面取得了进展,但大多数方法都依赖于3D地面真相进行训练,这对于大规模收集来说是昂贵的。我们克服了这些限制,并提出了一种方法,该方法可以在没有任何地面真实形状或布局信息的情况下学习预测物体的3D形状和布局:相反,我们依赖于具有2D监督的多视图图像,这可以更容易地大规模收集。通过ShapeNet, Hypersim和ScanNet上的广泛实验,我们证明了我们的方法适用于逼真图像的大型数据集,并且与依赖3D地面真相的方法相比具有优势。在hyper -persim和ScanNet中,可靠的3D地面真相是不可用的,我们的方法优于在较小和较少多样化的数据集上训练的监督方法。11项目页面https://gkioxari.github.io/usl/
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