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Image registration using PCA and gradient method for super-resolution imaging

机译:使用PCA和梯度方法进行图像配准的超分辨率成像

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Super-resolution (SR) enhancement from multi-frame low-resolution (LR) images (multi-frame super-resolution) has been a well-studied topic in the literature. Image registration is the most important part for multi-frame super-resolution, and accurate alignment of LR images would contribute a critical role for the final success of SR image reconstruction. In this paper, we propose to combine the Principle Component Analysis (PCA) based registration method, which can perform object alignment in real-time and without constraints on the three registration parameters (i.e., translation, rotation, and scaling), and gradient registration method, which can perform precise registration with minor image movement. Experimental results show that the reconstruction SR images by our proposed method have much higher quality than those by the state of art algorithms.
机译:多帧低分辨率(LR)图像的超分辨率(SR)增强(多帧超分辨率)一直是文献研究的重点。图像配准是多帧超分辨率的最重要部分,LR图像的精确对齐将为SR图像重建的最终成功发挥关键作用。在本文中,我们建议结合基于主成分分析(PCA)的配准方法,该方法可以实时执行对象对齐,而不受三个配准参数(即平移,旋转和缩放)和梯度配准的约束方法,可以在图像移动不大的情况下进行精确定位。实验结果表明,我们提出的方法重建的SR图像的质量比现有算法的质量高得多。

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