使用局部相关的CCD图像去马赛克

R. Sher, M. Porat
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引用次数: 5

摘要

介绍了一种利用相邻像素之间的空间关系进行图像插值的新方法。在第一阶段,基于图像的稀疏版本研究了局部统计关系。在第二阶段,使用图像的控制规则来构建插值版本。该插值方法适用于彩色单ccd图像的去马赛克处理。首先分别研究各颜色分量的相关规律,然后构建差分图像(修改后的色调)消除颜色相关性,使重构信号更加平滑。由于在拜耳模式中,并非所有的颜色分量都是均匀表示的,因此该算法将主要的绿色分量与红色和蓝色分量区别处理,以绿色作为整个图像重建的基础。进一步的统计工具被添加到算法中,以改善视觉结果。我们将我们的方法与目前可用的单CCD彩色成像的去马赛克技术进行比较,主要强调减少鬼色和虚幻边缘。我们的结论是,该方法可以显著改善图像处理中的插值和去马赛克任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CCD image demosaicing using localized correlations
A new approach to image interpolation using spatial relationships between adjacent pixels is introduced. In its first stage, the localized statistical relationships are studied based on the sparse version of the image. In the second stage, the governing rules of the image are used to build an interpolated version. The proposed interpolation method is suitable for color single-CCD images for demosaicing purposes. The correlation rule is studied first for each color component separately, then difference images (modified hues) are built to eliminate the color correlation, leading to a smoother reconstructed signal. Since in Bayer pattern not all the color components are equally represented, the algorithm deals with the major green component differently from the red and blue, using the green as a basis for the whole image reconstruction. Further statistical tools are added to the algorithm to improve the visual results. We compare our method to presently available demosaicing techniques for single CCD color imaging with the major emphasis on reducing ghost colors and unreal edges. Our conclusion is that the proposed method can significantly improve interpolation and demosaicing tasks in image processing.
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