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cGANs with Conditional Convolution Layer

Authors :
Sagong, Min-Cheol
Shin, Yong-Goo
Yeo, Yoon-Jae
Park, Seung
Ko, Sung-Jea
Sagong, Min-Cheol
Shin, Yong-Goo
Yeo, Yoon-Jae
Park, Seung
Ko, Sung-Jea
Publication Year :
2019

Abstract

Conditional generative adversarial networks (cGANs) have been widely researched to generate class conditional images using a single generator. However, in the conventional cGANs techniques, it is still challenging for the generator to learn condition-specific features, since a standard convolutional layer with the same weights is used regardless of the condition. In this paper, we propose a novel convolution layer, called the conditional convolution layer, which directly generates different feature maps by employing the weights which are adjusted depending on the conditions. More specifically, in each conditional convolution layer, the weights are conditioned in a simple but effective way through filter-wise scaling and channel-wise shifting operations. In contrast to the conventional methods, the proposed method with a single generator can effectively handle condition-specific characteristics. The experimental results on CIFAR, LSUN and ImageNet datasets show that the generator with the proposed conditional convolution layer achieves a higher quality of conditional image generation than that with the standard convolution layer.<br />Comment: Submitted to IEEE Trans. Neural Networks and Learning Systems (TNNLS)

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1106345984
Document Type :
Electronic Resource