IEEE Trans Image Process. 2013 Nov;22(11):4271-85. doi: 10.1109/TIP.2013.2271849. Epub 2013 Jul 3.
In this paper a contrast-guided image interpolation method is proposed that incorporates contrast information into the image interpolation process. Given the image under interpolation, four binary contrast-guided decision maps (CDMs) are generated and used to guide the interpolation filtering through two sequential stages: 1) the 45(°) and 135(°) CDMs for interpolating the diagonal pixels and 2) the 0(°) and 90(°) CDMs for interpolating the row and column pixels. After applying edge detection to the input image, the generation of a CDM lies in evaluating those nearby non-edge pixels of each detected edge for re-classifying them possibly as edge pixels. This decision is realized by solving two generalized diffusion equations over the computed directional variation (DV) fields using a derived numerical approach to diffuse or spread the contrast boundaries or edges, respectively. The amount of diffusion or spreading is proportional to the amount of local contrast measured at each detected edge. The diffused DV fields are then thresholded for yielding the binary CDMs, respectively. Therefore, the decision bands with variable widths will be created on each CDM. The two CDMs generated in each stage will be exploited as the guidance maps to conduct the interpolation process: for each declared edge pixel on the CDM, a 1-D directional filtering will be applied to estimate its associated to-be-interpolated pixel along the direction as indicated by the respective CDM; otherwise, a 2-D directionless or isotropic filtering will be used instead to estimate the associated missing pixels for each declared non-edge pixel. Extensive simulation results have clearly shown that the proposed contrast-guided image interpolation is superior to other state-of-the-art edge-guided image interpolation methods. In addition, the computational complexity is relatively low when compared with existing methods; hence, it is fairly attractive for real-time image applications.
本文提出了一种基于对比度引导的图像插值方法,该方法将对比度信息纳入图像插值过程中。对于待插值图像,生成四个二值对比度引导决策图(CDM),并通过两个连续阶段来指导插值滤波:1)45°和 135°CDM 用于插值对角线像素,2)0°和 90°CDM 用于插值行和列像素。在对输入图像进行边缘检测后,CDM 的生成在于评估每个检测到的边缘附近的非边缘像素,以重新分类它们可能为边缘像素。该决策通过在计算的方向变化(DV)场中求解两个广义扩散方程来实现,使用一种导出的数值方法分别扩散或扩展对比度边界或边缘。扩散的程度与在每个检测到的边缘处测量的局部对比度成正比。然后对扩散的 DV 场进行阈值处理,以分别生成二进制 CDM。因此,将在每个 CDM 上创建具有可变宽度的决策带。在每个阶段生成的两个 CDM 将被利用作为指导图来进行插值过程:对于 CDM 上声明的每个边缘像素,将应用一维方向滤波来根据相应的 CDM 估计其相关的要插值的像素;否则,将使用二维无方向或各向同性滤波来估计每个声明的非边缘像素的相关缺失像素。广泛的仿真结果清楚地表明,所提出的基于对比度引导的图像插值优于其他最先进的基于边缘引导的图像插值方法。此外,与现有方法相比,计算复杂度相对较低;因此,它非常适合实时图像应用。