- 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.
United States
United Kingdom
India
Germany
France
Canada
Russia
Spain
Brazil
Australia
Argentina
Austria
Belgium
Bulgaria
Chile
Colombia
Cyprus
Czechia
Denmark
Ecuador
Egypt
Estonia
Finland
Greece
Hungary
Indonesia
Ireland
Italy
Japan
Latvia
Lithuania
Luxembourg
Malaysia
Malta
Mexico
Netherlands
New Zealand
Norway
Philippines
Poland
Portugal
Romania
Singapore
Slovakia
Slovenia
South Africa
South Korea
Sweden
Switzerland
Taiwan
Thailand
Turkey
Ukraine