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Why Having 10,000 Parameters in Your Camera Model Is Better Than Twelve

机译:为什么在相机模型中具有10,000个参数要好于十二个

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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.
机译:相机校准是设置3D计算机视觉系统的重要第一步。常用的参数相机模型仅限于几个自由度,因此通常无法最佳地适应复杂的实际镜头失真。相反,通用摄像机型号具有灵活性,因此可以进行非常精确的校准。尽管如此,他们在实践中几乎没有用。在本文中,我们认为这应该改变。我们为通用模型提出了一个校准流程,该流程是全自动的,易于使用的,并且可以作为参数校准的直接替代品,重点是准确性。我们将结果与参数校准进行比较。以立体深度估计和相机姿态估计为例,我们表明校准误差对结果有偏差。因此,我们认为,与当前的惯常做法相反,通用模型应在可能的情况下优先于参数模型。为方便起见,我们在https://github.com/puzzlepaint/camera_calibration上发布了校准管道,使所有人都可以使用易于使用且准确的相机校准。

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