Image resizing is a basic tool in image processing and in literature we have many methods, based on different approaches, which are often specialized in only upscaling or downscaling. In this paper, independently of the (reduced or enhanced) size we aim to get, we approach the problem at a continuous scale where the underlying continuous image is globally approximated by the tensor product Lagrange polynomial interpolating at a suitable grid of first kind Chebyshev zeros. This is a well-known approximation tool that is widely used in many applicative yields, due to the optimal behavior of the related Lebesgue constants. Here we show how Lagrange-Chebyshev interpolation can be fruitfully applied also for resizing an arbitrary digital image in both downscaling and upscaling. The performance of the proposed method has been tested in terms of the standard SSIM and PSNR metrics. The results indicate that, in upscaling, it is almost comparable with the classical Bicubic resizing method with slightly better metrics, but in downscaling a much higher performance has been observed in comparison with Bicubic and other recent methods too. Moreover, in downscaling cases with an odd scale factor, we give an estimate of the mean squared error produced by our method and prove it is theoretically null (hence PSNR equals to infinite and SSIM equals to one) in absence of noise or initial artifacts on the input image.
翻译:图像重新定位是图像处理和文献中我们有许多方法的基本工具, 其基础是不同的方法, 这些方法往往专门用于升级或降缩。 在本文中, 与我们所要达到的( 降幅或增幅) 大小无关, 我们以连续的连续图像在全球范围被高压产品Lagrange 多元合成插图所近似的方式, 在首类 Chebyshev 零值的合适网格上测试了拟议方法的性能。 结果表明, 由于相关的 Lebesgue 常量的最佳行为, 在许多适应性收成中广泛使用这一众所周知的近似工具。 这里我们展示了Lagrange- Chebyshev 内插图如何被卓有成效地应用, 以便在降幅上和升幅上调整任意的数字图像。 以标准 SSIM 和 PS NRR 度衡量标准测试了该方法的性能。 结果显示, 在升幅上, 它几乎可以与典型的Bicublic 重新校准方法相比, 但是在降序中, 在降序中, 和平级方法中, 我们观察到了一种高得多的性 的比 的比 。