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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A new robust algorithmic for multi-camera calibration with a 1D object under general motions without prior knowledge of any camera intrinsic parameter
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A new robust algorithmic for multi-camera calibration with a 1D object under general motions without prior knowledge of any camera intrinsic parameter

机译:一种新的鲁棒算法,可在不知道任何摄像机固有参数的情况下,在一般运动下对一维物体进行多摄像机标定

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摘要

In computer vision, camera calibration is a necessary process when the retrieval of information such as angles and distances is required. This paper addresses the multi-camera calibration problem with a single dimension calibration pattern under general motions. Currently, the known algorithms for solving this problem are based on the estimation of vanishing points. However, this estimate is very susceptible to noise, making the methods unsuitable for practical applications. Instead, this paper presents a new calibration algorithm, where the cameras are divided into binocular sets. The fundamental matrix of each binocular set is then estimated, allowing to perform a projective calibration of each camera. Then, the calibration is updated for the Euclidean space, ending the process. The calibration is possible without imposing any restrictions on the movement of the pattern and without any prior information about the cameras or motion. Experiments on synthetic and real images validate the new method and show that its accuracy makes it suitable also for practical applications.
机译:在计算机视觉中,当需要检索角度和距离等信息时,相机校准是必要的过程。本文以一般运动下的单维校准模式解决了多相机校准问题。当前,用于解决该问题的已知算法是基于消失点的估计。然而,该估计非常容易受到噪声的影响,从而使得该方法不适合实际应用。取而代之的是,本文提出了一种新的校准算法,将相机分为双目镜组。然后估计每个双筒望远镜的基本矩阵,从而可以对每个摄像机进行投影校准。然后,更新欧几里德空间的校准,从而结束该过程。可以进行校准,而不会对图案的移动施加任何限制,也无需任何有关相机或运动的事先信息。在合成图像和真实图像上进行的实验验证了该新方法的有效性,并表明该方法的准确性使其也适用于实际应用。

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