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Multi-Frame Super-Resolution Reconstruction Algorithm of Optical Remote Sensing Images Based on Double Regularization Terms and Unsupervised Learning

机译:基于双正规化术语和无监督学习的光遥感图像多帧超分辨率重构算法

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摘要

High-resolution images have always been in urgent need in the fields of surveying, mapping, military and civilian. In this paper, first, based on anisotropic nonlinear diffusion tensor, a diffusion tensor regularization term which can make full use of direction selection smoothing property was constructed. Based on the improved gradient vector field (GVF), a regularization term which can constrain the continuity of gradient vectors for high-resolution and low-resolution images was constructed. On the basis of these, a multi-frame super-resolution reconstruction algorithm based on double regularization terms was proposed and verified by simulation. Second, combining PCA with adaptive dictionary learning, two constraints of reconstruction regularity based on improved nonlocal means and kernel regression were proposed for experimental verification, and an improved K-means clustering algorithm for initial centre selection of spatial characteristic measure clustering was proposed to enhance the stability of the algorithm. Then high-resolution image generated by learning method was used as the initial input of multi-frame reconstruction of optical remote sensing images. The experimental results show that the reconstruction algorithm based on partial differential equation and unsupervised learning achieves both subjective and objective results for the realization of super-resolution reconstruction of optical remote sensing images.
机译:高分辨率图像始终在测量,绘图,军事和民用领域迫切需要。本文首先基于各向异性非线性扩散张量,构建了可以充分利用方向选择平滑性的扩散张量正则化术语。基于改进的梯度矢量字段(GVF),构造了可以限制用于高分辨率和低分辨率图像的梯度向量的连续性的正则化术语。基于这些,通过模拟提出并验证了一种基于双正则化术语的多帧超分辨率重建算法。其次,组合PCA与自适应词典学习,提出了基于改进的非局部手段和内核回归的重建规则性的两个约束,提出了一种改进的K-Means聚类算法,用于初始中心选择空间特征测量聚类的选择,以增强算法的稳定性。然后通过学习方法生成的高分辨率图像被用作光遥感图像的多帧重建的初始输入。实验结果表明,基于部分微分方程和无监督学习的重建算法实现了对光学遥感图像超分辨率重构的主观和客观结果。

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