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Improving color constancy by discounting the variation of camera spectral sensitivity

机译:通过折扣相机光谱灵敏度的变化来改善颜色恒定

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摘要

It is an ill-posed problem to recover the true scene colors from a color biased image by discounting the effects of scene illuminant and camera spectral sensitivity (CSS) at the same time. Most color constancy (CC) models have been designed to first estimate the illuminant color, which is then removed from the color biased image to obtain an image taken under white light, without the explicit consideration of CSS effect on CC. This paper first studies the CSS effect on illuminant estimation arising in the inter-dataset-based CC (inter-CC), i.e., training a CC model on one dataset and then testing on another dataset captured by a distinct CSS. We show the clear degradation of existing CC models for inter-CC application. Then a simple way is proposed to overcome such degradation by first learning quickly a transform matrix between the two distinct CSSs (CSS-1 and CSS-2). The learned matrix is then used to convert the data (including the illuminant ground truth and the color-biased images) rendered under CSS-1 into CSS-2, and then train and apply the CC model on the color-biased images under CSS-2 without the need of burdensome acquiring of the training set under CSS-2. Extensive experiments on synthetic and real images show that our method can clearly improve the inter-CC performance for traditional CC algorithms. We suggest that, by taking the CSS effect into account, it is more likely to obtain the truly color constant images invariant to the changes of both illuminant and camera sensors. (C) 2017 Optical Society of America
机译:通过折扣现场光源和相机光谱灵敏度(CSS)的效果,从颜色偏置图像恢复真实的场景颜色是一种不良问题。大多数颜色恒定(CC)模型已经设计为首先估计光源颜色,然后从偏置图像中移除,以获得在白光下拍摄的图像,而不明确考虑CSS对CC的影响。本文首先研究CSS对基于间数据集基基CC(INTER-CC)中产生的发光估计的影响,即,在一个数据集上训练CC模型,然后在由不同CSS捕获的另一个数据集上进行测试。我们展示了CC间应用程序现有CC型号的清晰降级。然后,提出了一种简单的方法来克服这种劣化,通过首先学习在两个不同CSSS(CSS-1和CSS-2)之间快速变换矩阵。然后使用学习矩阵将CSS-1下呈现为CSS-2的数据(包括发光地面真理和颜色偏置图像),然后在CSS下的颜色偏置图像上培训并应用CC模型。 2,无需在CSS-2下担任培训率。对合成和实图像的广泛实验表明,我们的方法可以清楚地提高传统CC算法的CC间性能。我们建议,通过考虑CSS效应,更有可能获得真正的颜色常数图像不变,以改变光源和摄像机传感器的变化。 (c)2017年光学学会

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