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Efficient conditional GAN transfer with knowledge propagation across classes

Efficient conditional GAN transfer with knowledge propagation across classes
Efficient conditional GAN transfer with knowledge propagation across classes
Generative adversarial networks (GANs) have shown impressive results in both unconditional and conditional image generation. In recent literature, it is shown that pre-trained GANs, on a different dataset, can be transferred to improve the image generation from a small target data. The same, however, has not been well-studied in the case of conditional GANs (cGANs), which provides new opportunities for knowledge transfer compared to unconditional setup. In particular, the new classes may borrow knowledge from the related old classes, or share knowledge among themselves to improve the training. This motivates us to study the problem of efficient conditional GAN transfer with knowledge propagation across classes. To address this problem, we introduce a new GAN transfer method to explicitly propagate the knowledge from the old classes to the new classes. The key idea is to enforce the popularly used conditional batch normalization (BN) to learn the class-specific information of the new classes from that of the old classes, with implicit knowledge sharing among the new ones. This allows for an efficient knowledge propagation from the old classes to the new ones, with the BN parameters increasing linearly with the number of new classes. The extensive evaluation demonstrates the clear superiority of the proposed method over state-of-the-art competitors for efficient conditional GAN transfer tasks. The code is available at: https://github.com/mshahbazi72/cGANTransfer
12162-12171
Shahbazi, Mohamad
43260cc8-a35a-4680-8e87-0ea604892657
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Paudel, Danda Pani
92cefdf8-92e7-43ff-b952-6290a9844be0
Chhatkuli, Ajad
81e87161-d7aa-4d9a-bd29-7c580571e945
Van Gool, Luc
49100622-c81d-40c5-a33a-b3f2b1a365ae
Shahbazi, Mohamad
43260cc8-a35a-4680-8e87-0ea604892657
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Paudel, Danda Pani
92cefdf8-92e7-43ff-b952-6290a9844be0
Chhatkuli, Ajad
81e87161-d7aa-4d9a-bd29-7c580571e945
Van Gool, Luc
49100622-c81d-40c5-a33a-b3f2b1a365ae

Shahbazi, Mohamad, Huang, Zhiwu, Paudel, Danda Pani, Chhatkuli, Ajad and Van Gool, Luc (2021) Efficient conditional GAN transfer with knowledge propagation across classes. In IEEE CVF Conference on Computer Vision and Pattern Recognition. pp. 12162-12171 . (doi:10.1109/CVPR46437.2021.01199).

Record type: Conference or Workshop Item (Paper)

Abstract

Generative adversarial networks (GANs) have shown impressive results in both unconditional and conditional image generation. In recent literature, it is shown that pre-trained GANs, on a different dataset, can be transferred to improve the image generation from a small target data. The same, however, has not been well-studied in the case of conditional GANs (cGANs), which provides new opportunities for knowledge transfer compared to unconditional setup. In particular, the new classes may borrow knowledge from the related old classes, or share knowledge among themselves to improve the training. This motivates us to study the problem of efficient conditional GAN transfer with knowledge propagation across classes. To address this problem, we introduce a new GAN transfer method to explicitly propagate the knowledge from the old classes to the new classes. The key idea is to enforce the popularly used conditional batch normalization (BN) to learn the class-specific information of the new classes from that of the old classes, with implicit knowledge sharing among the new ones. This allows for an efficient knowledge propagation from the old classes to the new ones, with the BN parameters increasing linearly with the number of new classes. The extensive evaluation demonstrates the clear superiority of the proposed method over state-of-the-art competitors for efficient conditional GAN transfer tasks. The code is available at: https://github.com/mshahbazi72/cGANTransfer

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More information

Published date: 19 June 2021

Identifiers

Local EPrints ID: 501676
URI: http://eprints.soton.ac.uk/id/eprint/501676
PURE UUID: 2fa34662-7231-4c2a-bd96-6df7472c8dca
ORCID for Zhiwu Huang: ORCID iD orcid.org/0000-0002-7385-079X

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Date deposited: 05 Jun 2025 16:57
Last modified: 06 Jun 2025 02:06

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Contributors

Author: Mohamad Shahbazi
Author: Zhiwu Huang ORCID iD
Author: Danda Pani Paudel
Author: Ajad Chhatkuli
Author: Luc Van Gool

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