魏子涵, 王慧, 王晶, 高岚, 张伟功. 基于特征增强的人脸属性转换[J]. 微电子学与计算机, 2020, 37(10): 38-41, 47.
引用本文: 魏子涵, 王慧, 王晶, 高岚, 张伟功. 基于特征增强的人脸属性转换[J]. 微电子学与计算机, 2020, 37(10): 38-41, 47.
WEI Zi-han, WANG Hui, WANG Jing, GAO Lan, ZHANG Wei-gong. Face attribute transfer based on feature enhancement[J]. Microelectronics & Computer, 2020, 37(10): 38-41, 47.
Citation: WEI Zi-han, WANG Hui, WANG Jing, GAO Lan, ZHANG Wei-gong. Face attribute transfer based on feature enhancement[J]. Microelectronics & Computer, 2020, 37(10): 38-41, 47.

基于特征增强的人脸属性转换

Face attribute transfer based on feature enhancement

  • 摘要: 采用生成对抗网络及其扩展模型可以实现人脸属性转换,但生成图像存在分辨率低及特征损失的问题.本文基于GeneGAN网络,提出一种基于特征增强的人脸属性转换算法,在生成网络中增加网络深度,建立高低维特征耦合通道,通过对特定属性深度特征提取比较,优化生成图像的身份及属性特征.在CelebA数据集上的实验表明,本文算法得到的高分辨率图像不仅在保留图像身份信息上有较好的改善,同时在视觉效果和客观指标上都有较大的提高.

     

    Abstract: The current facial attribute transformation based on generative adversarial networks (GAN) and GAN-based method has problems of low resolution and feature loss of the generated image. Based on the GeneGAN network, this paper proposes a face attribute conversion algorithm based on feature enhancement. By increasing the network depth in the generation network, establishing a high- and low-dimensional feature coupling channel, and extracting and comparing specific attribute depth features to optimize the identity and features of the generated image. Experiment based on CelebA dataset shows that the high-resolution images generated by the proposed algorithm have a better improvement in maintaining image identity information, and have a greater improvement in visual effects and objective indicators.

     

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