Robust Metric Reconstruction from Challenging Video Sequences

CVPR(2007)

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摘要
Although camera self-calibration and metric reconstruction have been extensively studied during the past decades, automatic metric reconstruction from long video sequences with varying focal length is still very challenging. Several critical issues in practical implementations are not adequately addressed. For example, how to select the initial frames for initializing the projective reconstruction? What criteria should be used? How to handle the large zooming problem? How to choose an appropriate moment for upgrading the projective reconstruction to a metric one? This paper gives a careful investigation of all these issues. Practical and effective approaches are proposed. In particular, we show that existing image-based distance is not an adequate measurement for selecting the initial frames. We propose a novel measurement to take into account the zoom degree, the self-calibration quality, as well as image-based distance. We then introduce a new strategy to decide when to upgrade the projective reconstruction to a metric one. Finally, to alleviate the heavy computational cost in the bundle adjustment, a local on-demand approach is proposed. Our method is also extensively compared with the state-of-the-art commercial software to evidence its robustness and stability.
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关键词
video signal processing,projective reconstruction,video sequences,image reconstruction,camera self-calibration,image-based distance,automatic metric reconstruction,robustness,length measurement,motion estimation,motion pictures
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