摄像机切除
计算机科学
校准
摄像机自动校准
计算机视觉
人工智能
参数统计
管道(软件)
失真(音乐)
参数化模型
照相机镜头
光学(聚焦)
立体摄像机
灵活性(工程)
对比度(视觉)
镜头(地质)
数学
工程类
光学
统计
物理
石油工程
放大器
程序设计语言
带宽(计算)
计算机网络
作者
Thomas Schöps,Viktor Larsson,Marc Pollefeys,Torsten Sattler
标识
DOI:10.1109/cvpr42600.2020.00261
摘要
Camera calibration is an essential first step in setting up 3D Computer Vision systems. Commonly used parametric camera models are limited to a few degrees of freedom and thus often do not optimally fit to complex real lens distortion. In contrast, generic camera models allow for very accurate calibration due to their flexibility. Despite this, they have seen little use in practice. In this paper, we argue that this should change. We propose a calibration pipeline for generic models that is fully automated, easy to use, and can act as a drop-in replacement for parametric calibration, with a focus on accuracy. We compare our results to parametric calibrations. Considering stereo depth estimation and camera pose estimation as examples, we show that the calibration error acts as a bias on the results. We thus argue that in contrast to current common practice, generic models should be preferred over parametric ones whenever possible. To facilitate this, we released our calibration pipeline at https://github.com/puzzlepaint/camera_calibration, making both easy-to-use and accurate camera calibration available to everyone.
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