A feature-based approach for monocular camera tracking in unknown environments

S. A. Hoseini, P. Kabiri
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引用次数: 1

Abstract

Camera tracking is an important issue in many computer vision and robotics applications, such as, augmented reality and Simultaneous Localization And Mapping (SLAM). In this paper, a feature-based technique for monocular camera tracking is proposed. The proposed approach is based on tracking a set of sparse features, which are successively tracked in a stream of video frames. In the developed system, camera initially views a chessboard with known cell size for few frames to be enabled to construct initial map of the environment. Thereafter, Camera pose estimation for each new incoming frame is carried out in a framework that is merely working with a set of visible natural landmarks. Estimation of 6-DOF camera pose parameters is performed using a particle filter. Moreover, recovering depth of newly detected landmarks, a linear triangulation method is used. The proposed method is applied on real world videos and positioning error of the camera pose is less than 3 cm in average that indicates effectiveness and accuracy of the proposed method.
未知环境中基于特征的单目摄像机跟踪方法
相机跟踪是许多计算机视觉和机器人应用中的一个重要问题,例如增强现实和同步定位和地图(SLAM)。本文提出了一种基于特征的单目摄像机跟踪技术。该方法基于跟踪一组稀疏特征,这些特征在视频帧流中被连续跟踪。在已开发的系统中,相机最初观察具有已知单元大小的棋盘几帧,以便构建环境的初始地图。此后,相机姿态估计的每一个新的传入帧是在一个框架中进行的,这仅仅是一组可见的自然地标。利用粒子滤波对六自由度相机姿态参数进行估计。此外,采用线性三角剖分法对新检测到的地标进行深度恢复。将该方法应用于真实视频,摄像机姿态的定位误差平均小于3 cm,表明了该方法的有效性和准确性。
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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