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大佬你好,你们所写论文里面的x到底是什么?怎么迭代实现超分辨率的?网上查找到的资料,与你们发在CVPR上的图不一致,这个迭代该怎么理解?还望不吝赐教!
The text was updated successfully, but these errors were encountered:
x 是image, 就是从low res 到high res做。 在low res(128) 先用content network 得到一个initial prediction,再run textureoptimization, 之后再upsample 到下一个res (256), 再用这个做init做texture optimiaztion。再upsample到最高一个resolution(512), 做texture optimiation。
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那每一次upsample后,texture network第一层的参数都得改?(毕竟init的大小变了)
是的 你可以看看run_texture_optimization.lua
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大佬你好,你们所写论文里面的x到底是什么?怎么迭代实现超分辨率的?网上查找到的资料,与你们发在CVPR上的图不一致,这个迭代该怎么理解?还望不吝赐教!
The text was updated successfully, but these errors were encountered: