基于视觉的大型图像数据库实时移动增强现实跟踪

Madjid Maidi, M. Preda, Yassine Lehiani, T. Lavric
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引用次数: 2

摘要

本文提出了一种增强现实应用中自然物体的跟踪方法。目标检测和识别使用无标记的方法依赖于提取图像显著特征和描述符。该方法使用一种新的特征检索和成对匹配策略来处理大型图像数据库。此外,所开发的方法集成了基于摄像机视角变换的分析技术的三维姿态估计的实时解决方案。该算法将来自识别部分的二维特征样本与目标空间的三维映射点相关联。其次,提出了一种排序对应的采样方案,建立了二维/三维投影关系。跟踪器使用特征图像和3D模型进行定位,通过计算相机运动参数来增强覆盖图形的场景视图。在该体系结构中构建的模块部署在移动平台上,以提供与周围现实世界交互的直观界面。该系统在具有挑战性的可扩展图像数据集上进行了实验和评估,所获得的结果证明了该方法在多功能增强现实应用中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-based tracking in large image database for real-time mobile augmented reality
This paper presents an approach for tracking natural objects in augmented reality applications. The targets are detected and identified using a markerless approach relying upon the extraction of image salient features and descriptors. The method deals with large image databases using a novel strategy for feature retrieval and pairwise matching. Further-more, the developed method integrates a real-time solution for 3D pose estimation using an analytical technique based on camera perspective transformations. The algorithm associates 2D feature samples coming from the identification part with 3D mapped points of the object space. Next, a sampling scheme for ordering correspondences is carried out to establishing the 2D/3D projective relationship. The tracker performs localization using the feature images and 3D models to enhance the scene view with overlaid graphics by computing the camera motion parameters. The modules built within this architecture are deployed on a mobile platform to provide an intuitive interface for interacting with the surrounding real world. The system is experimented and evaluated on challenging scalable image dataset and the obtained results demonstrate the effectiveness of the approach towards versatile augmented reality applications.
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