Digital images are commonly represented as regular 2D arrays, so pixels are organized in form of a matrix addressed by integers. However, there are many image processing operations, such as rotation or motion compensation, that produce pixels at non-integer positions. Typically, image reconstruction techniques cannot handle samples at non-integer positions. In this paper, we propose to use triangulation-based reconstruction as initial estimate that is later refined by a novel adaptive denoising framework. Simulations reveal that improvements of up to more than 1.8 dB (in terms of PSNR) are achieved with respect to the initial estimate.
翻译:数字图像通常被作为常规的 2D 阵列,因此像素以以整数处理的矩阵形式组织,然而,许多图像处理操作,如旋转或运动补偿,在非整数位置产生像素。一般情况下,图像重建技术无法处理非整数位置的样本。在本文中,我们提议使用基于三角的重建作为初步估计,随后通过一个新的适应性去注框架加以完善。模拟显示,在初步估计方面,已经实现了多达1.8 dB(PSNR)的改进。