Robust homography for real-time image un-distortion

Jianhui Chen, Karim Benzeroual, R. Allison
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引用次数: 3

Abstract

Stereoscopic 3D film production has increased the need for efficient and robust camera calibration and tracking. Many of these tasks involve making planar correspondence and thus accurate fast homography estimation is essential. However, homography estimation may fail with distorted images since the planar projected corners may be distorted far away from the “perfect” locations. On the other hand, precisely estimating lens distortion from a single image is still a challenge, especially in real-time applications. In this paper, we drop the assumption that the image distortion is negligible in homography estimation. We propose robust homography as a simple and efficient approach which combines homography mapping and image distortion estimation in a least square constraint. Our method can simultaneously estimate homography and image distortion from a single image in real-time. Compared with previous methods, it has two advantages: first, un-distortion can be achieved with little overhead due to the need for only a single calibration image and the real-time homography mapping of easy to track corners; second, due to the use of precise calibration targets the accuracy of our method is comparable to the multiple image calibration methods. In an experimental evaluation, we show that our method can accurately estimate image distortion parameters in both synthetic and real images. We also present its applications in close range un-distortion and robust corner detection.
鲁棒单应性实时图像不失真
立体3D电影制作增加了对高效和强大的摄像机校准和跟踪的需求。许多这些任务涉及平面对应,因此准确快速的单应性估计是必不可少的。然而,由于平面投影角可能在远离“完美”位置的地方被扭曲,因此对于扭曲图像,单应性估计可能会失败。另一方面,从单幅图像中精确估计透镜畸变仍然是一个挑战,特别是在实时应用中。在本文中,我们在单应性估计中放弃了图像失真可以忽略的假设。鲁棒单应性是一种简单有效的方法,它结合了单应性映射和最小二乘约束下的图像失真估计。该方法可以实时地同时估计单幅图像的单应性和图像畸变。与以往的方法相比,该方法具有两大优点:一是只需要一幅校准图像,并且可以实时地对易于跟踪的角点进行单应性映射,从而在很小的开销下实现不失真;其次,由于使用了精确的校准目标,我们的方法的精度可与多种图像校准方法相媲美。实验结果表明,该方法可以准确地估计合成图像和真实图像的畸变参数。并介绍了其在近距离无损检测和鲁棒角点检测中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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