School of Computer Science and Technology, Harbin Institute of Technology, Harbin 150001, China.
IEEE Trans Image Process. 2011 Dec;20(12):3455-69. doi: 10.1109/TIP.2011.2150234. Epub 2011 May 12.
The linear regression model is a very attractive tool to design effective image interpolation schemes. Some regression-based image interpolation algorithms have been proposed in the literature, in which the objective functions are optimized by ordinary least squares (OLS). However, it is shown that interpolation with OLS may have some undesirable properties from a robustness point of view: even small amounts of outliers can dramatically affect the estimates. To address these issues, in this paper we propose a novel image interpolation algorithm based on regularized local linear regression (RLLR). Starting with the linear regression model where we replace the OLS error norm with the moving least squares (MLS) error norm leads to a robust estimator of local image structure. To keep the solution stable and avoid overfitting, we incorporate the l(2)-norm as the estimator complexity penalty. Moreover, motivated by recent progress on manifold-based semi-supervised learning, we explicitly consider the intrinsic manifold structure by making use of both measured and unmeasured data points. Specifically, our framework incorporates the geometric structure of the marginal probability distribution induced by unmeasured samples as an additional local smoothness preserving constraint. The optimal model parameters can be obtained with a closed-form solution by solving a convex optimization problem. Experimental results on benchmark test images demonstrate that the proposed method achieves very competitive performance with the state-of-the-art interpolation algorithms, especially in image edge structure preservation.
线性回归模型是设计有效图像插值方案的非常有吸引力的工具。文献中已经提出了一些基于回归的图像插值算法,其中目标函数通过普通最小二乘法 (OLS) 进行优化。然而,从稳健性的角度来看,已经表明 OLS 插值可能具有一些不理想的特性:即使少量的离群值也会极大地影响估计值。为了解决这些问题,在本文中,我们提出了一种基于正则化局部线性回归 (RLLR) 的新型图像插值算法。从线性回归模型开始,我们用移动最小二乘 (MLS) 误差范数代替 OLS 误差范数,从而得到局部图像结构的稳健估计量。为了保持解的稳定性并避免过度拟合,我们将 l(2)-范数作为估计量复杂度的惩罚项。此外,受基于流形的半监督学习的最新进展的启发,我们通过利用已测量和未测量的数据点,明确考虑了内在的流形结构。具体来说,我们的框架通过使用未测量样本诱导的边缘概率分布的几何结构作为附加的局部平滑保持约束,来考虑内在的流形结构。可以通过求解凸优化问题,通过闭式解来获得最优模型参数。在基准测试图像上的实验结果表明,与最先进的插值算法相比,所提出的方法具有非常有竞争力的性能,尤其是在图像边缘结构保持方面。