SIMPLER IS BETTER: SPECTRAL REGULARIZATION AND UP-SAMPLING TECHNIQUES FOR VARIATIONAL AUTOENCODERS
Sara Björk, Jonas Nordhaug Myhre, Thomas Haugland Johansen
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:15:13
Full characterization of the spectral behavior of generative models based on neural networks remains an open issue. Recent research has focused heavily on generative adversarial networks and the high-frequency discrepancies between real and generated images. The current solution to avoid this is to either replace transposed convolutions with bilinear up-sampling or add a spectral regularization term in the generator. We propose a 2D Fourier transform-based spectral regularization loss and evaluate it on the variational autoencoder. We show that it can achieve results equal to, or better than, the current state-of-the-art in frequency-aware losses for generative models. In addition, we experiment with altering the up-sampling procedure in the generator network and investigate how it influences the spectral performance of the model. We include experiments on synthetic and real data sets to demonstrate our results.