首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ROBOT VISION: CALIBRATION OF WIDE-ANGLE LENS CAMERAS USING COLLINEARITY CONDITION AND K-NEAREST NEIGHBOUR REGRESSION
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ROBOT VISION: CALIBRATION OF WIDE-ANGLE LENS CAMERAS USING COLLINEARITY CONDITION AND K-NEAREST NEIGHBOUR REGRESSION

机译:机器人视觉:使用准直条件和K近邻法对大角度镜头进行校准

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Visual perception is regularly used by humans and robots for navigation. By either implicitly or explicitly mapping the environment, ego-motion can be determined and a path of actions can be planned. The process of mapping and navigation are delicately intertwined; therefore, improving one can often lead to an improvement of the other. Both processes are sensitive to the interior orientation parameters of the camera system and mathematically modelling these systematic errors can often improve the precision and accuracy of the overall solution. This paper presents an automatic camera calibration method suitable for any lens, without having prior knowledge about the sensor. Statistical inference is performed to map the environment and localize the camera simultaneously. K-nearest neighbour regression is used to model the geometric distortions of the images. A normal-angle lens Nikon camera and wide-angle lens GoPro camera were calibrated using the proposed method, as well as the conventional bundle adjustment with self-calibration method (for comparison). Results showed that the mapping error was reduced from an average of 14.9?mm to 1.2?mm (i.e. a 92?% improvement) and 66.6?mm to 1.5?mm (i.e. a 98?% improvement) using the proposed method for the Nikon and GoPro cameras, respectively. In contrast, the conventional approach achieved an average 3D error of 0.9?mm (i.e. 94?% improvement) and 6?mm (i.e. 91?% improvement) for the Nikon and GoPro cameras, respectively. Thus, the proposed method performs more consistently, irrespective of the lens/sensor used: it yields results that are comparable to the conventional approach for normal-angle lens cameras, and it has the additional benefit of improving calibration results for wide-angle lens cameras.
机译:视觉感知被人类和机器人定期用于导航。通过隐式或显式映射环境,可以确定自我运动,并可以规划行动路径。映射和导航过程是微妙地交织在一起的;因此,改进一个通常可以导致另一个的改进。这两个过程都对相机系统的内部方向参数很敏感,因此对这些系统误差进行数学建模通常可以提高整体解决方案的精度和准确性。本文提出了一种适用于任何镜头的自动相机校准方法,而无需事先了解传感器。执行统计推断以映射环境并同时定位相机。 K最近邻回归用于对图像的几何变形进行建模。使用所提出的方法以及常规的带有自校准方法的束调整(用于比较)对尼康相机的直角镜头和广角GoPro相机进行了校准。结果表明,使用尼康建议的方法,测绘误差从平均14.9mm减小到1.2μmm(即提高92%),从66.6mm减小到1.5μmm(即98 %%)。和GoPro相机。相反,对于尼康相机和GoPro相机,传统方法的平均3D误差分别为0.9?mm(即94%)和6?mm(即91%)。因此,无论使用哪种镜头/传感器,该方法的执行效果都更加一致:其结果可与常规法向镜头相机相媲美,并且具有改善广角镜头相机校准结果的额外好处。 。

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