PlaneCalib:通过对平面上刚体的多次观测来自动标定相机

Vojtech Bartl, Roman Juránek, Jakub Špaňhel, A. Herout
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引用次数: 7

摘要

在这项工作中,我们提出了一种新的自动摄像机校准方法,主要用于监控摄像机。标定包括观测场景地平面上的物体;在我们的实验中,车辆被使用。然而,任何任意的刚性物体都可以代替,正如用合成数据进行的实验所证实的那样。校准过程使用卷积神经网络对场景中观察到的物体上的地标进行定位,以及定位后地标的相应3D位置,从而在图像平面上对检测到的车辆进行细粒度分类。对物体的观察(检测、分类和地标检测)可以确定所有常用的相机校准参数(焦距、旋转矩阵和平移向量)。与最先进的工作相比,用真实数据进行的实验显示出稍好的结果,但速度有极大的提高。校正误差从3.01%降低到2.72%,计算速度提高了1223℃。
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PlaneCalib: Automatic Camera Calibration by Multiple Observations of Rigid Objects on Plane
In this work, we propose a novel method for automatic camera calibration, mainly for surveillance cameras. The calibration consists in observing objects on the ground plane of the scene; in our experiments, vehicles were used. However, any arbitrary rigid objects can be used instead, as verified by experiments with synthetic data. The calibration process uses convolutional neural network localisation of landmarks on the observed objects in the scene and the corresponding 3D positions of the localised landmarks � thus fine-grained classification of the detected vehicles in the image plane is done. The observation of the objects (detection, classification and landmark detection) enables to determine all typically used camera calibration parameters (focal length, rotation matrix, and translation vector). The experiments with real data show slightly better results in comparison with state-of-the-art work, however with an extreme speed-up. The calibration error decreased from 3.01% to 2.72% and 1223 � faster computation was achieved.
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