Efficient and robust extrinsic camera calibration procedure for Lane Departure Warning

S. Hold, C. Nunn, A. Kummert, S. Muller-Schneiders
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引用次数: 24

Abstract

Intelligent Driver Assistance Systems, such as Lane Departure Warning, extract 3D information of the road geometry from a camera. Therefore, the transformation between the image and the ground plane has to be determined with a very high accuracy. Conventional calibration methods are usually a compromise between the accuracy and a preferably small effort for the calibration set-up. In this paper, we present an efficient and robust method for an accurate estimation of the extrinsic parameters based on minimizing an error function. The idea is to avoid the difficult and time-consuming measurement of marker positions in the 3D world coordinate system which is fixed with respect to the vehicle. A pattern of circles is placed on the ground plane in front of the car. For our approach, it is only necessary to measure the relative distances between the centers of the circles to each other. A nonlinear-optimization algorithm minimizes the squared difference between the distances of the backprojected circles segmented in the images on the ground plane and of the measurement in the real world.
车道偏离预警的高效鲁棒外部摄像机标定方法
智能驾驶辅助系统,如车道偏离警告,从摄像头提取道路几何形状的3D信息。因此,必须以非常高的精度确定图像与地平面之间的转换。传统的校准方法通常是在精度和校准设置的较小努力之间的折衷。在本文中,我们提出了一种基于最小化误差函数的有效且鲁棒的外部参数精确估计方法。这个想法是为了避免在相对于车辆固定的三维世界坐标系中测量标记位置的困难和耗时。在汽车前面的地平面上放置了一个圆圈图案。对于我们的方法,只需要测量圆心之间的相对距离。非线性优化算法最大限度地减少了在地平面上的图像中分割的反向投影圆与现实世界中测量的距离之间的平方差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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