Beyond PASCAL: A benchmark for 3D object detection in the wild

Yu Xiang, Roozbeh Mottaghi, S. Savarese
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引用次数: 726

Abstract

3D object detection and pose estimation methods have become popular in recent years since they can handle ambiguities in 2D images and also provide a richer description for objects compared to 2D object detectors. However, most of the datasets for 3D recognition are limited to a small amount of images per category or are captured in controlled environments. In this paper, we contribute PASCAL3D+ dataset, which is a novel and challenging dataset for 3D object detection and pose estimation. PASCAL3D+ augments 12 rigid categories of the PASCAL VOC 2012 [4] with 3D annotations. Furthermore, more images are added for each category from ImageNet [3]. PASCAL3D+ images exhibit much more variability compared to the existing 3D datasets, and on average there are more than 3,000 object instances per category. We believe this dataset will provide a rich testbed to study 3D detection and pose estimation and will help to significantly push forward research in this area. We provide the results of variations of DPM [6] on our new dataset for object detection and viewpoint estimation in different scenarios, which can be used as baselines for the community. Our benchmark is available online at http://cvgl.stanford.edu/projects/pascal3d.
超越PASCAL:野外3D物体检测的基准
三维目标检测和姿态估计方法近年来变得流行,因为它们可以处理二维图像中的歧义,并且与二维目标检测器相比,还提供了更丰富的对象描述。然而,大多数用于3D识别的数据集仅限于每个类别的少量图像或在受控环境中捕获。在本文中,我们提供了PASCAL3D+数据集,这是一个新颖而具有挑战性的3D目标检测和姿态估计数据集。PASCAL3D+用3D注释增强了PASCAL VOC 2012[4]的12个刚性类别。此外,从ImageNet[3]中为每个类别添加更多图像。与现有的3D数据集相比,PASCAL3D+图像表现出更多的可变性,平均每个类别有3000多个对象实例。我们相信该数据集将为研究3D检测和姿态估计提供丰富的测试平台,并将有助于显著推进该领域的研究。我们在我们的新数据集上提供了DPM的变化结果[6],用于不同场景下的目标检测和视点估计,这可以作为社区的基线。我们的基准可以在http://cvgl.stanford.edu/projects/pascal3d上找到。
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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