Using Fully Connected and Convolutional Net for GAN-Based Face Swapping

Bo-Shue Lin, Ding-Wen Hsu, Chin-Han Shen, Hsu-Feng Hsiao
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引用次数: 2

Abstract

The lifelike results of using face swapping have contributed greatly to the research in computer vision. In this work, we extend the architecture of faceswap-GAN in order to obtain more natural results compared to the original framework. In the original architecture, the self-attention module usually converts the facial features from a source face to the target face with artificial distortion around the facial features. We use a structure of fully connected convolutional layers as a discriminator to approach the problem. The outcome can be smoother and more natural perceptually compared to the results using the original faceswap-GAN.
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基于全连接卷积网络的gan人脸交换
人脸交换的逼真效果为计算机视觉的研究做出了重要贡献。在这项工作中,我们扩展了faceswap-GAN的架构,以获得比原始框架更自然的结果。在原有的体系结构中,自关注模块通常是通过对人脸特征周围进行人工畸变,将人脸特征从源人脸转换为目标人脸。我们使用全连接的卷积层结构作为鉴别器来解决这个问题。与使用原始换脸gan的结果相比,该结果在感知上更平滑,更自然。
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