融合边缘条件的多个鉴别器生成对抗网络
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国家重点研发基金资助项目(2018AAA0100400);湖南省自然科学基金资助项目(2021JJ50058);湖南省教 育厅开放平台创新基金资助项目(20K046);湖南省战略性新兴产业科技攻关与重大科技成果转化基金资助项 目(2019GK4009)


Multiple Discriminators Combining Edge Conditions to Generative Adversarial Network
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    摘要:

    针对现有图像处理方法仍然存在人脸补全后,人脸五官等局部区域的视觉连通性较差的问题, 提出了一种包含全局鉴别网络、局部鉴别网络和人脸部位鉴别网络的边缘补全方法。其中全局鉴别网络鉴别 全图的视觉连通性;局部鉴别网络约束补全部分;人脸部位鉴别网络约束补全图像效果。将残缺灰度图、 残缺边缘图和掩膜图输入到边缘补全网络,得到补全边缘图。然后将补全边缘图和残缺彩色图输入到图像 补全网络,得到补全图像。边缘补全网络和图像补全网络进行端对端连接,形成一个完整的解决方案。在 CelebA 数据集上与对照组进行视觉连通性对比,结果表明:提出的算法能够更好地还原人脸部位的信息。

    Abstract:

    In view of the flaw that the visual connectivity of such local areas as facial features is characterized with poor quality after face completion in existing image processing methods, an edge completion method, including global discriminator network, local discriminator network and face part discriminator network, has thus been proposed, among which the global discriminator network identifies the visual connectivity of the whole graph; the local discriminator network constraints the complement part; while the face part discriminator network constraints the complements the image effect. The completed edge image can be obtained by inputting the incomplete gray image, incomplete edge image and mask image into the edge completion network, to be followed by the input of the completed edge map and incomplete color map into the image completion network, thus obtaining the completed image, with edge completion network and image completion network connected end-to-end to form a complete solution. Visual connectivity was compared with the control group on CelebA dataset, the results show that the proposed algorithm is more effective in the restoration of the information of face parts.

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朱文球,汪晓毅,黄史记.融合边缘条件的多个鉴别器生成对抗网络[J].湖南工业大学学报,2022,36(1):84-94.

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  • 收稿日期:2021-04-22
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  • 在线发布日期: 2022-01-05
  • 出版日期: 2022-01-01