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Image registration using wavelet-based motion model

机译:使用基于小波的运动模型进行图像配准

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An image registration algorithm is developed to estimate dense motion vectors between two images using the coarse-to-fine wavelet-based motion model. This motion model is described by a linear combination of hierarchical basis functions proposed by Cai and Wang (SIAM Numer. Anal., 33(3):937-970, 1996). The coarser-scale basis function has larger support while the finer-scale basis function has smaller support. With these variable supports in full resolution, the basis functions serve as large-to-small windows so that the global and local information can be incorporated concurrently for image matching, especially for recovering motion vectors containing large displacements. To evaluate the accuracy of the wavelet-based method, two sets of test images were experimented using both the wavelet-based method and a leading pyramid spline-based method by Szeliski et al. (International Journal of Computer Vision, 22(3):199-218, 1996). One set of test images, taken from Barron et al. (International Journal of Computer Vision, 12:43-77, 1994), contains small displacements. The other set exhibits low texture or spatial aliasing after image blurring and contains large displacements. The experimental results showed that our wavelet-based method produced better motion estimates with error distributions having a smaller mean and smaller standard deviation. [References: 46]
机译:开发了一种图像配准算法,以使用基于粗小波的小波运动模型来估计两个图像之间的密集运动矢量。这种运动模型由Cai和Wang提出的层次基函数的线性组合来描述(SIAM Numer。Anal。,33(3):937-970,1996)。粗尺度基函数具有较大的支持,而细尺度基函数具有较小的支持。利用这些具有全分辨率的变量支持,基本函数可以用作从大到小的窗口,因此可以同时合并全局信息和局部信息以进行图像匹配,尤其是用于恢复包含大位移的运动矢量。为了评估基于小波的方法的准确性,Szeliski等人使用基于小波的方法和基于前导金字塔样条的方法对两组测试图像进​​行了实验。 (国际计算机视觉杂志,22(3):199-218,1996)。一组测试图像,取自Barron等人。 (国际计算机视觉杂志,12:43-77,1994),包含小的位移。另一组图像模糊后表现出较低的纹理或空间混叠,并包含较大的位移。实验结果表明,基于小波的方法产生的运动估计更好,误差分布的均值较小,标准偏差较小。 [参考:46]

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