首页> 外文会议>Iberian Conference on Pattern Recognition and Image Analysis(IbPRIA 2007) pt.1; 20070606-08; Girona(ES) >Decimation Estimation and Linear Model-Based Super-Resolution Using Zoomed Observations
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Decimation Estimation and Linear Model-Based Super-Resolution Using Zoomed Observations

机译:使用缩放观测值的抽取估计和基于线性模型的超分辨率

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In this paper we present a model based approach for super-resolving an image from a sequence of zoomed observations. From a set of images taken at different camera zooms, we super-resolve the least zoomed image at the resolution of the most zoomed one. Novelty of our approach is that decimation matrix is estimated from the given observations themselves. We model the most zoomed image as an autoregressive (AR) model, learn the parameters and use in regularization to super-resolve the least zoomed image. The AR model is computationally less intensive as compare to Markov Random Field (MRF) model hence the approach can be employed in real-time applications. Experimental results on real images with integer zoom settings are shown. We also show how the learning of AR parameters in subblocks using Panchromatic (PAN) image gives better results for the multiresolution fusion process in remote sensing applications.
机译:在本文中,我们提出了一种基于模型的方法,用于从一系列缩放的观察结果中超级分辨图像。从以不同相机变焦拍摄的一组图像中,我们以最大变焦的分辨率超级分辨最小变焦的图像。我们方法的新颖之处在于,抽取矩阵是根据给定的观测值本身估算的。我们将最大缩放的图像建模为自回归(AR)模型,学习参数并用于正则化以超级解析最小缩放的图像。与马尔可夫随机场(MRF)模型相比,AR模型的计算强度较低,因此该方法可用于实时应用。显示了具有整数缩放设置的真实图像的实验结果。我们还展示了如何使用全色(PAN)图像学习子块中的AR参数,从而为遥感应用中的多分辨率融合过程提供更好的结果。

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