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Real-Time Structure and Motion by Fusion of Inertial and Vision Data for Mobile AR System

机译:融合惯性与视觉数据的移动AR系统实时结构与运动

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摘要

The performance of adding additional inertial data to improve the accuracy and robustness of visual tracking is investigated. For this real-time structure and motion algorithm, fusion is based on Kalman filter framework while using an extended Kalman filter to fuse the inertial and vision data, and a bank of Kalman filters to estimate the sparse 3D structure of the real scene. A simple, known target is used for the initial pose estimation. Motion and structure estimation filters can work alternately to recover the sensor motion, scene structure and other parameters. Real image sequences are utilized to test the capability of this algorithm. Experimental results show that the proper use of an additional inertial information can not only effectively improve the accuracy of the pose and structure estimation, but also handle occlusion problem.
机译:研究了添加其他惯性数据以提高视觉跟踪的准确性和鲁棒性的性能。对于这种实时结构和运动算法,融合基于Kalman滤波器框架,同时使用扩展的Kalman滤波器融合惯性和视觉数据,并使用一系列Kalman滤波器来估计真实场景的稀疏3D结构。一个简单的已知目标用于初始姿态估计。运动和结构估计滤波器可以交替工作以恢复传感器的运动,场景结构和其他参数。实际图像序列用于测试该算法的功能。实验结果表明,适当使用附加的惯性信息不仅可以有效地提高姿态和结构估计的准确性,而且可以解决遮挡问题。

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