从弓到箭:城市场景卷帘门整风

Vijay Rengarajan, A. Rajagopalan, R. Aravind
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引用次数: 49

摘要

在CMOS相机中,“直线必须保持直线”的透视规则很容易被运动带来的扭曲所影响。由于被称为滚动快门(RS)的逐行曝光机制,线条可以呈现为曲线。我们解决了在没有运动模糊的单幅图像中对手持相机由于RS效应而产生的畸变进行校正的问题,与城市场景特别相关。我们开发了一个程序,以提取突出的曲线从RS图像,因为这是必要的破译变化的行向运动。我们提出了一个基于直线度,角度和长度的线期望成本优化问题,以解决几何模糊性,同时基于仅旋转模型估计相机运动,假设已知相机固有矩阵。最后,根据估计的相机轨迹,利用逆映射对RS图像进行校正。我们展示了使用手机相机拍摄的RS图像的校正结果。我们还将我们的单图像方法与现有的通常需要多幅图像的视频和非盲RS校正方法进行了比较。
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From Bows to Arrows: Rolling Shutter Rectification of Urban Scenes
The rule of perspectivity that 'straight-lines-mustremain-straight' is easily inflected in CMOS cameras by distortions introduced by motion. Lines can be rendered as curves due to the row-wise exposure mechanism known as rolling shutter (RS). We solve the problem of correcting distortions arising from handheld cameras due to RS effect from a single image free from motion blur with special relevance to urban scenes. We develop a procedure to extract prominent curves from the RS image since this is essential for deciphering the varying row-wise motion. We pose an optimization problem with line desirability costs based on straightness, angle, and length, to resolve the geometric ambiguities while estimating the camera motion based on a rotation-only model assuming known camera intrinsic matrix. Finally, we rectify the RS image based on the estimated camera trajectory using inverse mapping. We show rectification results for RS images captured using mobile phone cameras. We also compare our single image method against existing video and nonblind RS rectification methods that typically require multiple images.
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