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Adaptive autoregressive model with window extension via explicit geometry for image interpolation

机译:通过显式几何进行窗口扩展的自适应自回归模型用于图像插值

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In this paper, we propose a novel adaptive autoregressive (AR) model constructed with an explicit geometry based extended window for image interpolation. Geometric features are chosen as criterions to include more useful pixels. These features are estimated explicitly and guide the interpolation window to extend adaptively. To characterize the piecewise stationary of images, the patch-geodesic distance based similarity is proposed and modulated into the adaptive AR model. For increasing the precision of the parameter estimation, a weighted ridge regression based estimation is employed. With the estimation, the multicollinearity between parameters, which occurs in piecewise stationarity conditions, is eliminated. Experimental results demonstrate that the proposed method is better than or competitive with state-of-the-art interpolation methods in both objective and subjective quality evaluations.
机译:在本文中,我们提出了一种新颖的自适应自适应(AR)模型,构造了一个用于图像插值的显式几何的扩展窗口。选择几何特征作为包括更多有用像素的标准。这些功能估计明确估计并引导插值窗口自适应扩展。为了表征图像的分段静止,提出了基于补丁地理距离的相似性并调制到自适应AR模型中。为了提高参数估计的精度,采用基于加权脊回归的估计。随着估计,消除了在分段实质性条件下发生的参数之间的多色性性。实验结果表明,在客观和主观质量评估中,所提出的方法比最先进的插值方法更好或竞争。

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