基于人工智能的非公制相机内部方位建模与估计

Q4 Biochemistry, Genetics and Molecular Biology
Hasanain A. Ajjah, Ahmed Alboabidallah, M. U. Mohammed, Awesar A. Hussain
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引用次数: 0

摘要

随着低成本数码相机的发展及其广泛应用,特别是在智能手机中,这些相机并不是为摄影测量应用而设计的。本研究的主要目的是利用人工智能对志愿者运行的相机拍摄的图像进行建模和估计内部方向参数(IOPs)。这些相机无法执行传统的校准过程或使用来自未知来源的图像进行图像测量。在测试所选样本的一致性确定的范围内,使用随机值估计IOPs。利用基于立体标定的模拟退火算法对这些参数进行优化,以获得产生最小rms重投影误差的最佳可能值。通过预标定过程中得到的参数与人工智能系统估算的参数之间的方差,得出了在IOPs的决定系数(焦距R2 = 0.717 ~ 0.812,主点(X, Y) R2 = 0.674 ~ 0.869,主点(X, Y) R2 = 0.504 ~ 0.613),径向和切向系数R2均接近零。因此,径向畸变k1、k2和切向畸变p1、p2的估计无效。在低镜头畸变参数下,由于畸变参数之间的相对差异较大,主距与主点之间的关系较强,在摄影测量应用中,计算参数之间的关系足够强,并根据精度公差进行估算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling and Estimation of Interior Orientation of Non-Metric Cameras using Artificial Intelligence
With the advancement of low-cost digital cameras and their widespread, especially in smartphones, these cameras are not designed for photogrammetry applications. The main aim of this study is to model and estimate the interior orientation parameters (IOPs) for images captured by volunteer-run cameras using artificial intelligence. These cameras were unavailable to perform traditional calibration processes or use images from unknown sources for image measuring. Estimating IOPs using random values within the range determined by testing the selected sample's consistency. Optimization was performed by Utilizing the Simulated Annealing algorithm based on stereo calibration to obtain the best possible values of these parameters that produce the minimum RMS-reprojection error attained. By The variance between the parameters from the pre-calibration process and estimated by an artificial intelligence system, The coefficient of determination in the IOPs (focal length R2 = 0.717 to 0.812, principal point (X, Y) R2 = (0.674 to 0.869, 0.504 to 0.613), Both radial and tangential coefficients, R2 was close to zero). Therefore, the estimations of radial distortions k1, k2, and tangential distortions p1 and p2 are invalid. A reasonably strong relationship between principal distance and principal point with low lens distortion parameters due to the significant relative differences between the distortion parameters, sufficient strength of the relationship between calculating parameters, and estimating according to accuracy tolerance in photogrammetry applications.
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来源期刊
Journal of Biomolecular Techniques
Journal of Biomolecular Techniques Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
2.50
自引率
0.00%
发文量
9
期刊介绍: The Journal of Biomolecular Techniques is a peer-reviewed publication issued five times a year by the Association of Biomolecular Resource Facilities. The Journal was established to promote the central role biotechnology plays in contemporary research activities, to disseminate information among biomolecular resource facilities, and to communicate the biotechnology research conducted by the Association’s Research Groups and members, as well as other investigators.
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