利用图像序列进行实时三维摄像机跟踪的有效初始化方案

F. Ababsa, Imane M. Zendjebil, Jean-Yves Didier, M. Mallem
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引用次数: 0

摘要

三维摄像机跟踪是增强现实和机器人导航等多种应用中的一个重要问题。当使用图像序列时,跟踪需要通过将从图像中提取的2D数据与代表先验世界知识的3D数据进行匹配来初始化。然而,这个过程是困难的,姿态估计的准确性很大程度上取决于前一步匹配的准确性。在本文中,我们提出了两种实现基于2D/3D点的匹配的原始方法,以初始化3D相机跟踪。第一种是半自动的,需要用户的干预。第二个是完全自动的。这两种方法都基于SURF描述符,其优点是对异常值具有快速和鲁棒性。给出了这两种方法的描述,并给出了在实际数据上进行的实验结果,并进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient initialization schemes for real-time 3D camera tracking using image sequences
3D camera tracking is an important issue for many kinds of applications such as augmented reality and robotics navigation. When image sequences are used, tracking needs to be initialized by matching 2D data extracted from images with 3D data representing a priori knowledge of the world. However, this process is difficult and the accuracy of the pose estimation strongly depends on the accuracy of the previous matching step. In this paper, we present two original approaches that achieve a 2D/3D points-based matching in order to initialize the 3D camera tracking. The first one is semi-automatic and requires the intervention of the user. The second one is completely automatic. Both approaches are based on SURF descriptors, which have the advantages of being fast and robust against outliers. A description of these two approaches is given and results obtained from experiments performed on real data are exposed and discussed.
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