Super-Resolution Restoration of MISR Images Using the UCL MAGiGAN System 超分辨率恢复

作者是伦敦大学学院Mullard空间科学实验室成像组,之前做过对火星图像的分辨率增强。

文章用了许多的图像处理方法获得特征和高分辨率的中间结果,最后用一个生产对抗网络获得更好的高分辨率结果。

用的数据是MISR多角度成像数据,225282个训练样本,输入275m分辨率(64*64),得到68.75m(256*256)的分辨率结果

中间整个的流程和数据的处理都没怎么看懂

过程:

The MAGiGAN SRR system is based on the

mutual shape adapted [2] features from accelerated segment test (MSA-FAST) [3] combined with

convolutional neural network (CNN) [4] feature matching (see stage 2 in Section 2.2),

adaptive least-squares correlation (ALSC) and

region growing (Gotcha) [5] (see stage 3 in Section 2.2),

partial differential equation (PDE)-based total variation (TV) regularization (GPT) [6,7] (see stage 4 in Section 2.2),

support vector machine (SVM) and

graph cut (GC)-based shadow modelling and removal [8] (see stage 1 in Section 2.2), and

the generative adversarial network (GAN) [9] based super-resolution refinement method (see stage 5 in Section 2.2).

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原文地址:https://www.cnblogs.com/tccbj/p/10800083.html