Ergun B, Kavzoglu T, Colkesen I, Sahin C
Gebze Institute of Technology, Department of Geodetic and Photogrammetric Engineering, Muallimkoy Campus, 41400 Gebze-Kocaeli, Turkey.
Opt Express. 2010 Feb 1;18(3):1927-36. doi: 10.1364/OE.18.001927.
The use of non-metric digital cameras in close-range photogrammetric applications and machine vision has become a popular research agenda. Being an essential component of photogrammetric evaluation, camera calibration is a crucial stage for non-metric cameras. Therefore, accurate camera calibration and orientation procedures have become prerequisites for the extraction of precise and reliable 3D metric information from images. The lack of accurate inner orientation parameters can lead to unreliable results in the photogrammetric process. A camera can be well defined with its principal distance, principal point offset and lens distortion parameters. Different camera models have been formulated and used in close-range photogrammetry, but generally sensor orientation and calibration is performed with a perspective geometrical model by means of the bundle adjustment. In this study, support vector machines (SVMs) using radial basis function kernel is employed to model the distortions measured for Olympus Aspherical Zoom lens Olympus E10 camera system that are later used in the geometric calibration process. It is intended to introduce an alternative approach for the on-the-job photogrammetric calibration stage. Experimental results for DSLR camera with three focal length settings (9, 18 and 36 mm) were estimated using bundle adjustment with additional parameters, and analyses were conducted based on object point discrepancies and standard errors. Results show the robustness of the SVMs approach on the correction of image coordinates by modelling total distortions on-the-job calibration process using limited number of images.
非量测数码相机在近景摄影测量应用和机器视觉中的使用已成为一个热门研究议程。相机校准作为摄影测量评估的一个重要组成部分,是非量测相机的关键阶段。因此,精确的相机校准和定向程序已成为从图像中提取精确可靠的三维测量信息的先决条件。缺乏精确的内定向参数会导致摄影测量过程中产生不可靠的结果。相机可以通过其主距、主点偏移和镜头畸变参数来很好地定义。不同的相机模型已被制定并用于近景摄影测量中,但一般来说,传感器定向和校准是通过光束法平差,利用透视几何模型来进行的。在本研究中,采用具有径向基函数核的支持向量机(SVM)对奥林巴斯非球面变焦镜头奥林巴斯E10相机系统测量的畸变进行建模,该模型随后用于几何校准过程。目的是为在职摄影测量校准阶段引入一种替代方法。使用带有附加参数的光束法平差估计了具有三种焦距设置(9毫米、18毫米和36毫米)的数码单反相机的实验结果,并基于物点差异和标准误差进行了分析。结果表明,支持向量机方法通过使用有限数量的图像对在职校准过程中的总畸变进行建模,在图像坐标校正方面具有稳健性。