论文标题
使用频率选择性重建从非规范子集从非规范子集重新采样到常规网格
Resampling Images to a Regular Grid from a Non-Regular Subset of Pixel Positions Using Frequency Selective Reconstruction
论文作者
论文摘要
即使图像信号通常是在常规二维网格上定义的,但也存在许多情况,没有这种情况,并且图像信号的幅度仅适用于像素位置的非规范子集。在这种情况下,必须将图像重新采样到常规网格。这是必要的,因为几乎所有用于处理,传输或显示图像信号的算法和技术都取决于常规网格上可用的样品。因此,在此规则网格上重建图像非常重要,以使重建最接近信号最初是在常规网格上获取的情况。在本文中,引入了频率选择性重建,以解决这项具有挑战性的任务。该算法通过利用属性来重建图像信号,即在傅立叶域中可以稀少地表示图像区域。通过进一步考虑成像系统的光传递函数的基本属性,可以迭代地生成信号的稀疏模型。这样一来,就PSNR和SSIM以及视觉质量而言,提出的算法能够达到非常高的重建质量。仿真结果表明,所提出的算法能够超过最先进的重建算法,而增益超过1 dB psnr是可能的。
Even though image signals are typically defined on a regular two-dimensional grid, there also exist many scenarios where this is not the case and the amplitude of the image signal only is available for a non-regular subset of pixel positions. In such a case, a resampling of the image to a regular grid has to be carried out. This is necessary since almost all algorithms and technologies for processing, transmitting or displaying image signals rely on the samples being available on a regular grid. Thus, it is of great importance to reconstruct the image on this regular grid so that the reconstruction comes closest to the case that the signal has been originally acquired on the regular grid. In this paper, Frequency Selective Reconstruction is introduced for solving this challenging task. This algorithm reconstructs image signals by exploiting the property that small areas of images can be represented sparsely in the Fourier domain. By further taking into account the basic properties of the Optical Transfer Function of imaging systems, a sparse model of the signal is iteratively generated. In doing so, the proposed algorithm is able to achieve a very high reconstruction quality, in terms of PSNR and SSIM as well as in terms of visual quality. Simulation results show that the proposed algorithm is able to outperform state-of-the-art reconstruction algorithms and gains of more than 1 dB PSNR are possible.