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WIDE-AREA EXTERNAL MULTI-CAMERA CALIBRATION USING VISION GRAPHS AND VIRTUAL CALIBRATION OBJECT

机译:广域外部多摄像头校准使用视觉图和虚拟校准对象

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In this paper we address external calibration of distributed multi-camera system intended for tracking and observing. We present a robust and efficient method for wide area calibration using virtual calibration object created by two LED markers. Our algorithm does not require for all the cameras to share common volume; only pairwise overlap is required. We assume the cameras are internally calibrated prior to deployment. Calibration is performed by waiving the calibration bar over the camera coverage area. The initial pose of the cameras is calculated using essential matrix decompositions. Global calibration is solved by automatically constructing weighted vision graph and finding optimal transformation paths between the cameras. In the optimization process, we introduce novel parametrization for two-point calibration using direction normal. The results are increased accuracy and robustness of the method under the presence of noise. In the paper, we present experimental results on a synthetic and real camera setup. We have performed image noise analysis on a synthetic wide-area setup of 5 cameras. Finally, we present the results obtained on a real setup with 12 cameras. The results obtained on the real camera setup show that our approach compensates for error propagation when the path transformation includes two to three nodes. No significant difference in reprojection error was found between the cameras on non-direct and direct path of the vision graph. The mean reprojection error for the real cameras was below 0.4 pixels.
机译:在本文中,我们解决了用于跟踪和观察的分布式多摄像系统的外部校准。我们使用由两个LED标记产生的虚拟校准对象提出了一种强大而有效的方法,可以使用虚拟校准对象。我们的算法不需要所有相机共享常见卷;只需要成对重叠。我们假设在部署之前在内部校准摄像机。通过在相机覆盖区域上放弃校准栏来执行校准。使用必要的矩阵分解计算相机的初始姿势。通过自动构建加权视觉图并在摄像机之间找到最佳变换路径来解决全局校准。在优化过程中,我们使用方向正常地引入对两点校准的新颖参数化。结果是在存在噪声的情况下提高了该方法的准确性和鲁棒性。在本文中,我们在合成和实际相机设置上呈现实验结果。我们对5个摄像机的合成广域设置进行了图像噪声分析。最后,我们介绍了在具有12个摄像机的真实设置上获得的结果。在真实摄像机设置上获得的结果表明,当路径转换包括两个到三个节点时,我们的方法补偿了错误传播。在视觉图的非直接和直接路径之间的相机之间没有发现重注错误的显着差异。实际相机的平均输注误差低于0.4像素。

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