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A novel and accurate calibration method for cameras with large field of view using combined small targets

机译:一种使用组合小目标的大视野摄像机的新型精确校准方法

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摘要

Camera calibration accuracy is directly affected by the area and precision of targets. The low precision of large targets reduces camera calibration accuracy, whereas small targets lead to poor calibration results for their small size despite the high precision. To solve the problems, this paper proposes a calibration method for cameras with a large field of view, where multiple small high-precision targets are assembled to form combined small targets (CST). The main steps of the proposed calibration method are as follows. First, multiple high-precision small planar targets are distributed in the field of view of the camera to form a CST. The camera is placed for at least twice randomly to capture the CST images. Then, the feature points of CST are automatically located, and the intrinsic parameters of the camera are calculated based on the H matrix between each of the small planar targets and the image plane. All of the feature points of CST are united together by the transformation matrices between the coordinate frames of the small targets to obtain a large three-dimensional data field. Finally, the intrinsic parameters of the camera are optimized via the Levenberg-Marquardt algorithm. Simulation and real data experiments show that the calibration accuracy using the proposed method is close to that using a large target whose size is equal to the area enclosed by the small targets of CST, and is much better than that using a small target. (C) 2014 Elsevier Ltd. All rights reserved.
机译:相机校准精度直接受目标区域和精度的影响。大目标的低精度会降低相机的校准精度,而小目标却会因其小尺寸而导致校准效果差,尽管精度很高。为了解决这些问题,本文提出了一种针对大视场的摄像机的校准方法,该方法是将多个小的高精度目标组装在一起以形成组合的小目标(CST)。提出的校准方法的主要步骤如下。首先,将多个高精度的小型平面目标分布在相机的视场中,以形成CST。将相机随机放置至少两次以捕获CST图像。然后,自动定位CST的特征点,并基于每个小平面目标和像平面之间的H矩阵计算相机的固有参数。 CST的所有特征点都通过小目标的坐标系之间的变换矩阵组合在一起,以获得大的三维数据字段。最后,通过Levenberg-Marquardt算法优化了相机的固有参数。仿真和真实数据实验表明,所提方法的校准精度接近于大目标,其大小等于CST小目标所包围的面积,并且比小目标要好。 (C)2014 Elsevier Ltd.保留所有权利。

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