- Why do we need a Pix2Pix GAN where a supervised learning algorithm like U-Net could have worked to generate images from contours?
U-net only uses pixel-level loss during training. We needed pix2pix since there is no loss for realism when a U-net generates images. - Why do we need to optimize for 3 different loss functions in CycleGAN?
Answer provided in the 7 points in CycleGAN section. - How do the tricks leverage in ProgressiveGAN help in building a StyleGAN?
ProgressiveGAN helps the network to learn a few upsampling layers at a time so that when the image has to be increased in size, the networks responsible for generating current size images are optimal. - How do we identify latent vectors corresponding to a given custom image?
By adjusting the randomly generated noise in such a way that the MSE loss between the generated image and the image of interest is as minimal as possible.
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