野外动态场景的鲁棒辐射校准

Abhishek Badki, N. Kalantari, P. Sen
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引用次数: 15

摘要

将线性辐照度映射到像素强度的相机响应函数(CRF)必须用于计算成像应用,以匹配具有不同曝光的图像中的特征。该函数依赖于场景,在有显著运动的场景中很难估计。在本文中,我们提出了一种新的算法,用于辐射校准从多曝光图像的动态场景。我们的方法基于文献中的两个关键思想:(1)强度映射函数,将一张图像中的像素值映射到另一张图像,而不需要像素对应;(2)用于辐射校准的秩最小化算法。尽管每种方法都有其问题,但我们展示了如何将它们结合在一个公式中,以充分利用它们的优点。我们的算法比以前的方法更好地恢复动态场景的crf,我们展示了如何将其应用于现有的算法,如高动态范围成像算法,以改善其结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Radiometric Calibration for Dynamic Scenes in the Wild
The camera response function (CRF) that maps linear irradiance to pixel intensities must be known for computational imaging applications that match features in images with different exposures. This function is scene dependent and is difficult to estimate in scenes with significant motion. In this paper, we present a novel algorithm for radiometric calibration from multiple exposure images of a dynamic scene. Our approach is based on two key ideas from the literature: (1) intensity mapping functions which map pixel values in one image to the other without the need for pixel correspondences, and (2) a rank minimization algorithm for radiometric calibration. Although each method has its problems, we show how to combine them in aformulation that leverages their benefits. Our algorithm recovers the CRFs for dynamic scenes better than previous methods, and we show how it can be applied to existing algorithms such as those for high-dynamic range imaging to improve their results.
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