In this paper we present a novel feature-based RGB-D camera pose optimization algorithm for real-time 3D reconstruction systems.During camera pose estimation,current methods in online systems suffer from fast-scanned RGB-D data,or generate inaccurate relative transformations between consecutive frames.Our approach improves current methods by utilizing matched features across all frames and is robust for RGB-D data with large shifts in consecutive frames.We directly estimate camera pose for each frame by efficiently solving a quadratic minimization problem to maximize the consistency of 3D points in global space across frames corresponding to matched feature points.We have implemented our method within two state-of-the-art online 3D reconstruction platforms.Experimental results testify that our method is efficient and reliable in estimating camera poses for RGB-D data with large shifts.
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