Error Analysis of Camera Parameter Estimation based on Collinear Features

Onay Urfahuglo, Thorsten Thormählen, Hellward Broszio, Patrick Mikulastik
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Abstract

Feature points for camera parameter estimation are detected in noisy images. Therefore, the feature points and also the camera parameters can only be estimated with limited accuracy. In case of collinear feature points, it is possible to benefit from this geometrical regularity which results in an increased accuracy of the camera parameters. In this paper, a complete theoretical covariance propagation starting from the error of the feature points up to the error of the estimated camera parameters is performed. Additionally, by determining the Fisher information matrix the Cramer-Rao bounds for the covariance of the corrected feature point positions are determined. To demonstrate the impact of collinearity on the accuracy of the camera parameters, a covariance propagation is performed with varying feature point error covariances.
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基于共线特征的相机参数估计误差分析
在噪声图像中检测用于相机参数估计的特征点。因此,只能以有限的精度估计特征点和相机参数。在共线特征点的情况下,可以从这种几何规则中受益,从而提高相机参数的精度。本文进行了从特征点误差到相机参数估计误差的完整理论协方差传播。此外,通过确定Fisher信息矩阵,确定校正后特征点位置协方差的Cramer-Rao界。为了证明共线性对相机参数精度的影响,采用不同的特征点误差协方差进行协方差传播。
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