Batch Normalization (BN) is a common technique used to speed-up and stabilize training. On the other hand, the learnable parameters of BN are commonly used in conditional Generative Adversarial Networks (cGANs) for representing class-specific information using conditional Batch Normalization (cBN). In this paper we propose to generalize both BN and cBN using a Whitening and Coloring based batch normalization. We show that our conditional Coloring can represent categorical conditioning information which largely helps the cGAN qualitative results. Moreover, we show that full-feature whitening is important in a general GAN scenario in which the training process is known to be highly unstable. We test our approach on different datasets and using different GAN networks and training protocols, showing a consistent improvement in all the tested frameworks. Our CIFAR-10 conditioned results are higher than all previous works on this dataset.

Whitening and coloring batch transform for GANS / Siarohin, A.; Sangineto, E.; Sebe, N.. - (2019). (Intervento presentato al convegno International Conference on Learning Representations tenutosi a New Orleans nel May 6 - May 9, 2019).

Whitening and coloring batch transform for GANS

A. Siarohin;E. Sangineto;N. Sebe
2019-01-01

Abstract

Batch Normalization (BN) is a common technique used to speed-up and stabilize training. On the other hand, the learnable parameters of BN are commonly used in conditional Generative Adversarial Networks (cGANs) for representing class-specific information using conditional Batch Normalization (cBN). In this paper we propose to generalize both BN and cBN using a Whitening and Coloring based batch normalization. We show that our conditional Coloring can represent categorical conditioning information which largely helps the cGAN qualitative results. Moreover, we show that full-feature whitening is important in a general GAN scenario in which the training process is known to be highly unstable. We test our approach on different datasets and using different GAN networks and training protocols, showing a consistent improvement in all the tested frameworks. Our CIFAR-10 conditioned results are higher than all previous works on this dataset.
2019
International Conference on Learning Representations
New Orleans
Open Publisher
Siarohin, A.; Sangineto, E.; Sebe, N.
Whitening and coloring batch transform for GANS / Siarohin, A.; Sangineto, E.; Sebe, N.. - (2019). (Intervento presentato al convegno International Conference on Learning Representations tenutosi a New Orleans nel May 6 - May 9, 2019).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/250678
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