从扩展的未校准视频序列的3D模型:解决关键帧选择和投影漂移

Jason Repko, M. Pollefeys
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引用次数: 53

摘要

在本文中,我们提出了一种能够从未校准的手持相机捕获的扩展视频序列中重建3D模型的方法。我们主要关注两个具体问题:(1)关键帧选择;(2)投影漂移。给定一个长视频序列,使用所有视频帧通常是不实际的。此外,为了允许有效的异常值抑制和运动估计,有必要在帧之间有足够的基线。为此,我们提出了一种基于鲁棒模型选择准则的关键帧选择过程。该方法通过分析三个连续视图之间的特征对应关系,保证了摄像机运动的可靠估计。长时间未校准视频序列的另一个问题是投影漂移。误差累积导致模型的非投影畸变。这导致序列开始和结束时的投影基不一致,导致自校准失败。我们提出了一种对这种全局投影漂移不敏感的自校准方法。自定标后,采用绝对方向对关键帧三组进行对齐,并分层合并成完整的度量重构。接下来,我们使用立体匹配计算详细的三维表面模型。3D模型使用一些帧进行纹理处理。
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3D models from extended uncalibrated video sequences: addressing key-frame selection and projective drift
In this paper, we present an approach that is able to reconstruct 3D models from extended video sequences captured with an uncalibrated hand-held camera. We focus on two specific issues: (1) key-frame selection; and (2) projective drift. Given a long video sequence it is often not practical to work with all video frames. In addition, to allow for effective outlier rejection and motion estimation it is necessary to have a sufficient baseline between frames. For this purpose, we propose a key-frame selection procedure based on a robust model selection criterion. Our approach guarantees that the camera motion can be estimated reliably by analyzing the feature correspondences between three consecutive views. Another problem for long uncalibrated video sequences is projective drift. Error accumulation leads to a non-projective distortion of the model. This causes the projective basis at the beginning and the end of the sequence to become inconsistent and leads to the failure of self-calibration. We propose a self-calibration approach that is insensitive to this global projective drift. After self-calibration triplets of key-frames are aligned using absolute orientation and hierarchically merged into a complete metric reconstruction. Next, we compute a detailed 3D surface model using stereo matching. The 3D model is textured using some of the frames.
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