Seeing 3D Chairs: Exemplar Part-Based 2D-3D Alignment Using a Large Dataset of CAD Models

Mathieu Aubry, Daniel Maturana, Alexei A. Efros, Bryan C. Russell, Josef Sivic
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引用次数: 508

Abstract

This paper poses object category detection in images as a type of 2D-to-3D alignment problem, utilizing the large quantities of 3D CAD models that have been made publicly available online. Using the "chair" class as a running example, we propose an exemplar-based 3D category representation, which can explicitly model chairs of different styles as well as the large variation in viewpoint. We develop an approach to establish part-based correspondences between 3D CAD models and real photographs. This is achieved by (i) representing each 3D model using a set of view-dependent mid-level visual elements learned from synthesized views in a discriminative fashion, (ii) carefully calibrating the individual element detectors on a common dataset of negative images, and (iii) matching visual elements to the test image allowing for small mutual deformations but preserving the viewpoint and style constraints. We demonstrate the ability of our system to align 3D models with 2D objects in the challenging PASCAL VOC images, which depict a wide variety of chairs in complex scenes.
看到3D椅子:使用大型CAD模型数据集的基于零件的范例2D-3D对齐
本文利用在线公开的大量3D CAD模型,将图像中的对象类别检测作为一种2d到3D对齐问题。以“椅子”类为例,我们提出了一种基于范例的三维类别表示方法,该方法可以明确地模拟不同风格的椅子以及视点的巨大变化。我们开发了一种方法来建立三维CAD模型和真实照片之间的基于零件的对应关系。这是通过以下方式实现的:(i)使用一组依赖于视图的中级视觉元素以鉴别的方式从合成视图中学习来表示每个3D模型,(ii)在一个共同的负面图像数据集上仔细校准单个元素检测器,以及(iii)将视觉元素与测试图像匹配,允许小的相互变形,但保留视点和风格约束。我们展示了我们的系统在具有挑战性的PASCAL VOC图像中将3D模型与2D对象对齐的能力,这些图像描绘了复杂场景中的各种椅子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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