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POP Image Fusion -- Derivative Domain Image Fusion without Reintegration

机译:POP图像融合-无需重新集成的派生域图像融合

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There are many applications where multiple images are fused to form a single summary greyscale or colour output, including computational photography (e.g. RGB-NIR), diffusion tensor imaging (medical), and remote sensing. Often, and intuitively, image fusion is carried out in the derivative domain. Here, a new composite fused derivative is found that best accounts for the detail across all images and then the resulting gradient field is reintegrated. However, the reintegration step generally hallucinates new detail (not appearing in any of the input image bands) including halo and bending artifacts. In this paper we avoid these hallucinated details by avoiding the reintegration step. Our work builds directly on the work of Socolinsky and Wolff who derive their equivalent gradient field from the per-pixel Di Zenzo structure tensor which is defined as the inner product of the image Jacobian. We show that the x-and y-derivatives of the projection of the original image onto the Principal characteristic vector of the Outer Product (POP) of the Jacobian generates the same equivalent gradient field. In so doing, we have derived a fused image that has the derivative structure we seek. Of course, this projection will be meaningful only where the Jacobian has non-zero derivatives, so we diffuse the projection directions using a bilateral filter before we calculate the fused image. The resulting POP fused image has maximal fused detail but avoids hallucinated artifacts. Experiments demonstrate our method delivers state of the art image fusion performance.
机译:在许多应用中,将多个图像融合在一起以形成单个摘要灰度或彩色输出,包括计算摄影(例如RGB-NIR),扩散张量成像(医学)和遥感。通常,直观地,图像融合是在导数域中进行的。在这里,发现了一种新的合成融合导数,它可以最好地说明所有图像上的细节,然后将所得的梯度场重新积分。但是,重新整合步骤通常会使包括光晕和弯曲伪影的新细节(没有出现在任何输入图像带中)产生幻觉。在本文中,我们通过避免重新整合步骤来避免出现这些幻觉的细节。我们的工作直接建立在Socolinsky和Wolff的工作基础上,他们从每个像素的Di Zenzo结构张量中得出了它们的等效梯度场,该张量定义为图像Jacobian的内积。我们显示原始图像投影到Jacobian外部产品(POP)的主要特征向量上的x和y导数生成相同的等效梯度场。这样,我们得出了一个融合图像,该图像具有我们想要的派生结构。当然,只有在雅可比矩阵具有非零导数的情况下,此投影才有意义。因此,在计算融合图像之前,我们先使用双边滤波器对投影方向进行扩散。生成的POP融合图像具有最大的融合细节,但避免了幻影。实验表明,我们的方法可提供最先进的图像融合性能。

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