Novel approaches to the parametric cubic-spline interpolation.

IEEE Transactions on Image Processing(2013)

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摘要
The cubic-spline interpolation (CSI) scheme can be utilized to obtain a better quality reconstructed image. It is based on the least-squares method with cubic convolution interpolation (CCI) function. Within the parametric CSI scheme, it is difficult to determine the optimal parameter for various target images. In this paper, a novel method involving the concept of opportunity costs is proposed to identify the most suitable parameter for the CCI function needed in the CSI scheme. It is shown that such an optimal four-point CCI function in conjunction with the least-squares method can achieve a better performance with the same arithmetic operations in comparison with the existing CSI algorithm. In addition, experimental results show that the optimal six-point CSI scheme together with cross-zonal filter is superior in performance to the optimal four-point CSI scheme without increasing the computational complexity.
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关键词
cross-zonal filter,four-point cci function,interpolation,opportunity costs,convolution,cubic convolution interpolation function,image reconstruction,computational complexity,least squares approximations,parametric cubic-spline interpolation,six-point cubic convolution interpolation,cubic-spline interpolation (csi),filtering theory,image reconstruction quality,least-squares method,splines (mathematics),six-point csi scheme,most suitable parameter,arithmetic operations,least squares method,psnr,algorithms
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