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Adaptive estimation of optimal color transformations for deep convolutional network based homography estimation

机译:基于深度卷积网络的相同特写估计的最佳颜色变换的自适应估计

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摘要

Homography estimation from a pair of natural images is a problem of paramount importance for computer vision. Specialized deep convolutional neural networks have been proposed to accomplish this task. In this work, a method to enhance the result of this kind of homography estimators is proposed. Our approach generates a set of tentative color transformations for the image pair. Then the color transformed image pairs are evaluated by a regressor that estimates the quality of the homography that would be obtained by supplying the transformed image pairs to the homography estimator. Then the image pair that is predicted to yield the best result is provided to the homography estimator. Experimental results are shown, which demonstrate that our approach performs better than the direct application of the homography estimator to the original image pair, both in qualitative and quantitative terms.
机译:来自一对自然图像的同字估计是对计算机愿景至关重要的问题。 已经提出了专门的深度卷积神经网络来完成这项任务。 在这项工作中,提出了一种提高这种同类估算器的结果的方法。 我们的方法为图像对生成一组暂定的颜色变换。 然后,通过向相同估计器提供转换的图像对来评估颜色变换的图像对估计将通过向同住估计器提供变换的图像对来获得的相同的质量。 然后将预测到产生最佳结果的图像对被提供给相同的估计器。 示出了实验结果,这表明我们的方法比定性和定量术语的定量术语更好地表现优于定址估计对原始图像对的直接应用。

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