无序数据集中的无监督三维物体识别与重建

Matthew A. Brown, D. Lowe
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引用次数: 300

摘要

本文提出了一种图像数据库中三维物体的全自动识别与重建系统。我们将目标识别问题作为在所有图像之间找到一致匹配的问题之一,并受到从透视相机拍摄的图像的约束。我们假设物体或场景是刚性的。对于每个图像,我们关联一个相机矩阵,该矩阵由旋转、平移和焦距参数化。我们使用不变的局部特征来寻找所有图像之间的匹配,并使用RANSAC算法来寻找与基本矩阵一致的图像。物体被识别为匹配图像的子集。然后,我们使用稀疏束调整算法求解每个对象的结构和运动。我们的研究结果表明,在没有用户输入的情况下,从无序的图像数据库中识别和重建3D物体是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised 3D object recognition and reconstruction in unordered datasets
This paper presents a system for fully automatic recognition and reconstruction of 3D objects in image databases. We pose the object recognition problem as one of finding consistent matches between all images, subject to the constraint that the images were taken from a perspective camera. We assume that the objects or scenes are rigid. For each image, we associate a camera matrix, which is parameterised by rotation, translation and focal length. We use invariant local features to find matches between all images, and the RANSAC algorithm to find those that are consistent with the fundamental matrix. Objects are recognised as subsets of matching images. We then solve for the structure and motion of each object, using a sparse bundle adjustment algorithm. Our results demonstrate that it is possible to recognise and reconstruct 3D objects from an unordered image database with no user input at all.
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