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SILK: SCALE-SPACE INTEGRATED LUCAS-KANADE IMAGE REGISTRATION FOR SUPER-RESOLUTION FROM VIDEO

机译:丝绸:尺度空间集成Lucas-Kanade图像注册视频来自视频的超分辨率

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Registration between low-resolution images is a crucial step in super-resolution. Conventional methods tend to separate scale estimation from translation and rotation estimation. This is because the scale parameter is inherently related to the image resolution. In this paper, we present an area-based image registration technique that can simultaneously estimate translation, rotation, and scale parameters and also take into account differences in resolution between two images. We first develop a scale-space model that relates each reference pixel to a single observation pixel with a scale parameter. This model is then easily generalized to include x-y shift and rotation parameters. By integrating the scale-space model into a non-linear least squares method, the method can iteratively estimate the transformation (x-y shift, rotation, and scale) in an accurate and efficient manner. We compare our proposed scale-space integrated Lucas-Kanade's method (SILK) against Lucas-Kanade's optical flow and scale-invariant feature transform (SIFT) matching and show that our method is suitable for super-resolution from very low resolution image sequences.
机译:低分辨率图像之间的注册是超分辨率的重要步骤。传统方法倾向于将比例估计分离出版和旋转估计。这是因为刻度参数与图像分辨率固有地相关。在本文中,我们介绍了一种基于区域的图像配准技术,其可以同时估计转换,旋转和比例参数,并且还考虑两个图像之间分辨率的差异。我们首先开发一个刻度空间模型,其将每个参考像素与具有比例参数的单个观察像素相关联。然后容易地推广该模型以包括X-Y偏移和旋转参数。通过将刻度空间模型集成到非线性最小二乘法中,该方法可以以准确且有效的方式迭代地估计变换(X-Y偏移,旋转和缩放)。我们比较我们提出的规模空间集成Lucas-Kanade(Silk)对Lucas-Kanade的光流量和尺度不变的功能变换(SIFT)匹配,并表明我们的方法适用于来自非常低分辨率的图像序列的超分辨率。

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