增强现实中特征地图的重建与精确对齐

Folker Wientapper, H. Wuest, Arjan Kuijper
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引用次数: 21

摘要

本文主要研究了基于摄像机的跟踪系统中检索精确特征映射的准备过程。有了这个系统,它可以创建一个非常简单的设置工作流的现成的增强现实应用程序,在实践中只涉及三个步骤:从不同的角度拍摄对象或环境,定义基于少量3D-3D对应的重建地图和目标坐标框架之间的转换,最后,启动一个特征学习和束调整步骤。从技术上讲,该解决方案包括几个子算法。给定用户提供的图像序列,首先使用同步定位和映射(SLAM)方法重建特征映射并逐步扩展。针对SLAM模块的自动初始化问题,提出了一种检测翻译量的方法。由于初始重建地图是在任意坐标系中定义的,我们提出了一种基于用户定义的3D-3D对应关系的特征地图与增强模型的目标协调帧的最佳对齐方法。作为初始估计,我们求解带有缩放的刚性变换,称为绝对方向。为了优化对齐,我们提出了对众所周知的束调整的修改,其中我们包括这些3d - 3d对应作为约束。与普通的束调整相比,我们表明,这导致了更准确的重建,因为由于系统误差(如小相机校准误差或异常值)引起的地图变形得到了很好的补偿。这再次导致在应用程序运行时更好地对齐增强,即使在大规模环境中也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction and Accurate Alignment of Feature Maps for Augmented Reality
This paper focuses on the preparative process of retrieving accurate feature maps for a camera-based tracking system. With this system it is possible to create ready-to use Augmented Reality applications with a very easy setup work-flow, which in practice only involves three steps: filming the object or environment from various viewpoints, defining a transformation between the reconstructed map and the target coordinate frame based on a small number of 3D-3D correspondences and, finally, initiating a feature learning and Bundle Adjustment step. Technically, the solution comprises several sub-algorithms. Given the image sequence provided by the user, a feature map is initially reconstructed and incrementally extended using a Simultaneous-Localization-and-Mapping (SLAM) approach. For the automatic initialization of the SLAM module, a method for detecting the amount of translation is proposed. Since the initially reconstructed map is defined in an arbitrary coordinate system, we present a method for optimally aligning the feature map to the target coordinated frame of the augmentation models based on 3D-3D correspondences defined by the user. As an initial estimate we solve for a rigid transformation with scaling, known as Absolute Orientation. For refinement of the alignment we present a modification of the well-known Bundle Adjustment, where we include these 3D-3D-correspondences as constraints. Compared to ordinary Bundle Adjustment we show that this leads to significantly more accurate reconstructions, since map deformations due to systematic errors such as small camera calibration errors or outliers are well compensated. This again results in a better alignment of the augmentations during run-time of the application, even in large-scale environments.
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