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They use a combination of the standard GAN adversarial loss and a reconstruction loss. | They use a combination of the standard GAN adversarial loss and a reconstruction loss. | ||
===Reconstruction Loss=== | ===Reconstruction Loss=== | ||
<math>L_{rec} = \Vert G_n(0,(\bar{x}^{rec}_{n+1}\uparrow^r) - x_n \Vert ^2</math> | <math>L_{rec} = \Vert G_n(0,(\bar{x}^{rec}_{n+1}\uparrow^r) - x_n \Vert ^2</math><br> | ||
The reconstruction loss ensures that the original image can be built by the GAN. | The reconstruction loss ensures that the original image can be built by the GAN.<br> | ||
Rather than inputting noise to the generators, they input | Rather than inputting noise to the generators, they input | ||
<math>\{z_N^{rec}, z_{N-1}^{rec}, ..., z_0^{rec}\} = \{z^*, 0, ..., 0\}</math> | <math>\{z_N^{rec}, z_{N-1}^{rec}, ..., z_0^{rec}\} = \{z^*, 0, ..., 0\}</math> | ||
where the initial noise <math>z^*</math> is drawn once and then fixed during the rest of the training. | where the initial noise <math>z^*</math> is drawn once and then fixed during the rest of the training. |