Research on the Application of Jigsaw Generative Adversarial Network to Face Generation

Zhen-Jie Yu, Sheng-Chih Yang
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引用次数: 1

Abstract

In recent years, the development and research of GAN[1] is nothing more than a change in the number or structure of the generated network. The method of discriminate network is only to map different regional features to different discriminators and integrate them. As we all know, the quality of generator can affect the effectiveness of the entire network directly, but I think the function of the discriminator is the important pillar to support the entire network. So the author proposed a face-generation network named Jigsaw Generative Adversarial Network, which uses a single generator network with a discriminator as a layer. Each layer creates different parts to enhance the authenticity of each part, and then the face is composed in a jigsaw way, and is matched with the style module of Style GAN[2] to achieve more highly build quality. The proposed system can select the desired style for data set generation. For example, you can select the adult male style to generate a data set of all adult men and use this data set for research, or use the extracted style modules to apply to other generation networks and control the direction of the generated graph of the generated network.
拼图生成对抗网络在人脸生成中的应用研究
近年来GAN的发展和研究[1]无非是生成的网络数量或结构的变化。判别网络的方法只是将不同的区域特征映射到不同的判别器上并进行整合。众所周知,发生器的质量直接影响到整个网络的有效性,但我认为鉴别器的功能是支撑整个网络的重要支柱。因此,作者提出了一种人脸生成网络Jigsaw Generative Adversarial network,该网络采用带有鉴别器的单生成器网络作为一层。每一层创建不同的部分,以增强每个部分的真实性,然后将人脸以拼图的方式组成,并与style GAN[2]的样式模块相匹配,以达到更高的构建质量。该系统可以选择所需的样式来生成数据集。例如,您可以选择成年男性风格来生成所有成年男性的数据集并使用该数据集进行研究,或者使用提取的风格模块应用于其他生成网络,并控制生成网络的生成图的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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