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Enhancement to camera calibration: Representation, robust statistics, and 3D calibration tool.

机译:相机校准的增强功能:表示,强大的统计数据和3D校准工具。

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摘要

This thesis demonstrates the enhancement to camera calibration in three aspects: representation of pose, robust statistics and 3D calibration tool. Camera calibration is the reconstruction of digital camera information based on digital images of an object in 3D space, since the digital images are 2D projections of a 3D object onto the camera sensor. Camera calibration is the estimation of the interior orientation (IO) parameters and exterior orientation (EO) parameters of a digital camera. Camera calibration is an essential part of image metrology. If the quality of camera calibration cannot be guaranteed, neither can the reliability of the subsequent analysis and applications based on digital images.;The first enhancement of camera calibration is in representation of pose. A formal definition of "singularity of representation" is given mathematically. An example is offered to show how singularity can lead to difficulty or failure in optimization. The spherical coordinate system is introduced as a representation method instead of other widely-used representations. The spherical coordinate system represents camera poses according to camera calibration tool images in digital image processing. With the introduction of the v frame in digital images, the singularities of spherical coordinate system are demonstrated mathematically.;The application of robust statistics in optimization is the second enhancement of camera calibration. In photogrammetry, it is typical to collect thousands of observed data points for bundle adjustment. Unexpected outliers in observed data are unavoidable, and thus, the algorithm accuracy may not reach our goal. The least squares estimator is a widely used estimation method in camera calibration, but its sensitivity to outliers makes the algorithm unreliable, and it can even fail to fit the observations. By closely analyzing and comparing the characteristics of the least squares estimator, robust estimators with alternative assumptions are shown to detect and de-weight outliers that are not well processed with the classical assumptions, and provide a reliable fit to the observations. Among all possible robust estimators, two robust estimators from M-estimator family are applied to optimization in existing camera calibration algorithm. The robustified method can considerably improve accuracy for camera calibration estimation.;A new metric D is introduced, which is the distance between two camera calibrations considering all of the estimated camera IO parameters . D can be used to evaluate the performance among various estimators. After applying the robust estimator, the system improves the accuracy and performance in camera calibration up to 25%. The influence of a robustified estimator modification is also considered. It is established that the modification has impact on the estimation accuracy.;The third enhancement is the design and application of a 3D calibration tool for data collection. An all-new 3D calibration tool is designed to improve camera calibration accuracy over the 2D calibration tool. The comparison of the 3D and 2D calibration tools is conducted experimentally and theoretically. The experimental analysis is based on camera calibration results and the corresponding D matrix, which shows that the 3D calibration tool improves accuracy. The mathematical analysis is based on the calculated covariance matrix of camera calibration without other impact factors. The experimental and theoretical analyses show that the 3D calibration tool can obtain more accurate calibration results compared with the 2D calibration tool, establishing that a carefully designed 3D calibration tool will yield better estimates than a 2D calibration tool.
机译:本文从三个方面展示了相机校准的增强:姿势表示,鲁棒统计和3D校准工具。相机校准是基于3D空间中对象的数字图像的数字相机信息的重建,因为数字图像是3D对象在相机传感器上的2D投影。相机校准是数字相机的内部方向(IO)参数和外部方向(EO)参数的估计。相机校准是图像计量学的重要组成部分。如果无法保证相机校准的质量,则基于数字图像的后续分析和应用程序的可靠性也无法保证。相机校准的第一个增强之处在于姿态的表示。数学上给出了“表示的奇异性”的正式定义。提供了一个示例来说明奇异性如何导致优化中的困难或失败。介绍了球面坐标系作为表示方法,而不是其他广泛使用的表示方法。球坐标系表示在数字图像处理中根据照相机校准工具图像的照相机姿势。随着数字图像中v帧的引入,数学上证明了球坐标系的奇异性。在摄影测量中,通常收集数千个观察到的数据点以进行束调整。观察数据中的异常值是不可避免的,因此算法的准确性可能无法达到我们的目标。最小二乘估计器是相机校准中广泛使用的估计方法,但是其对异常值的敏感性使该算法不可靠,甚至可能无法拟合观测值。通过紧密分析和比较最小二乘估计量的特征,显示具有替代假设的鲁棒估计量可以检测和消除经典假设无法很好处理的离群值,并为观察值提供可靠的拟合。在所有可能的鲁棒估计器中,来自M估计器系列的两个鲁棒估计器被应用于现有相机校准算法中的优化。鲁棒的方法可以大大提高摄像机校准估计的准确性。引入了新的度量D,它是考虑所有估计的摄像机IO参数的两次摄像机校准之间的距离。 D可用于评估各种估算器之间的性能。在应用了鲁棒的估计器之后,该系统将相机校准的准确性和性能提高了25%。还考虑了稳健估计器修改的影响。可以确定修改对估计精度有影响。第三个增强是用于数据收集的3D校准工具的设计和应用。全新的3D校准工具旨在比2D校准工具提高相机的校准精度。 3D和2D校准工具的比较是通过实验和理论进行的。实验分析基于相机校准结果和相应的D矩阵,这表明3D校准工具提高了准确性。数学分析基于没有其他影响因素的相机校准的协方差矩阵。实验和理论分析表明,与2D校准工具相比,3D校准工具可以获得更准确的校准结果,这表明精心设计的3D校准工具将比2D校准工具产生更好的估计。

著录项

  • 作者

    LI, Qiaotian.;

  • 作者单位

    The University of Wisconsin - Milwaukee.;

  • 授予单位 The University of Wisconsin - Milwaukee.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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