Li X, Orchard M T
Sharp Labs. of America, Camas, WA 98607, USA.
IEEE Trans Image Process. 2001;10(10):1521-7. doi: 10.1109/83.951537.
This paper proposes an edge-directed interpolation algorithm for natural images. The basic idea is to first estimate local covariance coefficients from a low-resolution image and then use these covariance estimates to adapt the interpolation at a higher resolution based on the geometric duality between the low-resolution covariance and the high-resolution covariance. The edge-directed property of covariance-based adaptation attributes to its capability of tuning the interpolation coefficients to match an arbitrarily oriented step edge. A hybrid approach of switching between bilinear interpolation and covariance-based adaptive interpolation is proposed to reduce the overall computational complexity. Two important applications of the new interpolation algorithm are studied: resolution enhancement of grayscale images and reconstruction of color images from CCD samples. Simulation results demonstrate that our new interpolation algorithm substantially improves the subjective quality of the interpolated images over conventional linear interpolation.
本文提出了一种用于自然图像的边缘导向插值算法。其基本思想是首先从低分辨率图像估计局部协方差系数,然后基于低分辨率协方差与高分辨率协方差之间的几何对偶性,利用这些协方差估计在更高分辨率下进行自适应插值。基于协方差的自适应的边缘导向特性归因于其调整插值系数以匹配任意方向阶跃边缘的能力。提出了一种在双线性插值和基于协方差的自适应插值之间切换的混合方法,以降低总体计算复杂度。研究了新插值算法的两个重要应用:灰度图像的分辨率增强以及从CCD样本重建彩色图像。仿真结果表明,我们的新插值算法相较于传统线性插值,显著提高了插值图像的主观质量。