利用奈德-米德单纯形直接搜索最小化相机与激光测距仪之间的对准误差

T. Osgood, Yingping Huang, K. Young
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引用次数: 3

摘要

本文提出了一种新的方法来校准两个独立的传感器设备所使用的坐标系,以达到传感器融合的目的。在这个例子中,传感器是一个摄像头和一个激光雷达设备,它们从不同的角度观察同一个场景。利用合成的相应二维图像坐标和三维激光雷达测量值作为参考数据,提出了将重投影测量值与参考测量值对齐的优化问题。优化的目标是找到一组校准参数(外部偏移量和内部相机参数),使参考图像坐标和重新投影数据之间的平方误差总和最小化。利用标定参数对参考激光雷达测量值进行变换得到重投影数据,并将误差定义为每个参考点与重投影像素对之间的直线距离。使用Nelder-Mead单纯形搜索方法,在不到一秒的时间内找到校准参数,使得200个点的数据集的平方误差之和小于0.19,即每像素的平均误差为0.031px。该方法同时寻找内部和外部标定因子,并且对模型不做任何假设。此外,如果进行第二次优化,则只需使用4个参考对(假设这些点被正确选择),错误就可以减少到几乎为零。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Minimisation of alignment error between a camera and a laser range finder using Nelder-Mead simplex direct search
Presented in this paper is a novel method to calibrate the co-ordinate systems used by two separate sensor devices for the purposes of sensor fusion. In this example the sensors are a camera and a LIDAR device which are observing the same scene from different viewpoints. Using a synthetic set of corresponding 2D image co-ordinates and 3D LIDAR measurements as reference data the task of aligning re-projected measurements with reference measurements was posed as an optimisation problem. The objective of the optimisation is to find a set of calibration parameters (external offsets and internal camera parameters) which minimise the sum of squared errors between the reference image co-ordinates and the re-projected data. The re-projected data is obtained by transforming the reference LIDAR measurements using the calibration parameters and the errors are defined as the straight-line distance between each reference and re-projected pixel pair. Using the Nelder-Mead simplex search method calibration parameters were found in under a second such that the sum of squared errors across a data set of 200 points was less than 0.19 i.e. average error per pixel of 0.031px. The method finds both internal and external calibration factors and makes no assumptions about the model. Furthermore if a second optimisation pass is made the error can be reduced to almost zero using only 4 reference pairs assuming these points are selected correctly.
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