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A novel circular points-based self-calibration method for a camera's intrinsic parameters using RANSAC

机译:基于新型的基于圆形点的自校准方法,用于相机的内在参数使用RANSAC

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Intrinsic parameters in camera calibration are commonly solved with high precision using the homography matrix of space coordinates and image coordinates of a template. However, in practice the accuracy in the extraction of corner points of the calibration plate is usually affected by the lighting environment, leading to obvious fluctuation in the calibration results. This study proposes a novel self-calibration method to improve the calibration accuracy and reduce the instability of calibration results by using circular points and the RANdom SAmple consensus (RANSAC) method. The circular points for the intrinsic parameters are calculated using the cross-ratio method with a calibration plate containing nine corner points. The distance between the circular points and image of the absolute conic is defined. The threshold value of the RANSAC model is simulated by a computer. The intrinsic parameters are initially estimated using the unreliable calibrating images excluded by the RANSAC method. The definition of the threshold is based on the Sampson estimation. The maximum likelihood estimation method is performed to reestimate the intrinsic parameters and optimize the calibration result. The findings of the numerical simulations and experiments on wing-fuselage docking based on monocular vision demonstrate that the proposed method is more robust and efficient at improving the calibration accuracy than the traditional methods. The measurement error is reduced to less than 0.013 mm when the calibration algorithm is applied to actual applications such as wing-fuselage docking.
机译:相机校准中的固有参数通常使用高精度解决,使用空间坐标和模板的图像坐标。然而,在实践中,校准板的角点的提取的精度通常受到照明环境的影响,导致校准结果中的明显波动。本研究提出了一种新颖的自校准方法来提高校准精度,通过使用圆点和随机样本共识(RANSAC)方法来降低校准结果的不稳定性。使用具有九个角点的校准板的横向法计算本质参数的圆点。定义了绝对圆锥的圆点与图像之间的距离。 RANSAC模型的阈值由计算机模拟。最初使用RANSAC方法排除的不可靠的校准图像估计内部参数。阈值的定义基于SAMPSON估计。执行最大似然估计方法以重新定位内在参数并优化校准结果。基于单眼视觉的翼机械对接的数值模拟和实验的研究表明,该方法在提高校准精度比传统方法更具稳健和有效。当校准算法应用于诸如翼机构对接的实际应用时,测量误差减小到小于0.013mm。

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