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Attention Based Facial Expression Manipulation

机译:关注的面部表情操纵

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Facial expression manipulation has two objectives: 1) generating an image with target expression; 2) preserving the identity information of the original image as much as possible. Recently, Generative Adversarial Networks (GANs) have shown the abilities for fine-grained facial expression manipulation. However, current methods are still prone to generate images with poor quality. In this work, we propose a U-Net based generator with multi-attention gate for facial expression manipulation. The multi-level attention mechanism is helpful to manipulate relevant regions and preserve identity features, thus improving the editing ability. Furthermore, we adopt self-attention block to replace direct skip-connection to get long-range dependency in images. To suppress artifacts in generated images, we add a discriminator based loss function in the training process. Extensive experiments on both quantitative and qualitative evaluation show that our proposed method achieves better performance for facial expression manipulation.
机译:面部表情操纵有两个目标:1)用目标表达产生图像; 2)尽可能多地保留原始图像的身份信息。最近,生成的对抗性网络(GANS)表明了细粒度面部表情操纵的能力。然而,目前的方法仍然容易产生具有差的质量差的图像。在这项工作中,我们提出了一种具有用于面部表情操作的多关注栅极的U-Net基础的发电机。多级注意机制有助于操纵相关区域并保留身份特征,从而提高编辑能力。此外,我们采用自我关注块来替换直接跳过连接以获得图像的远程依赖性。为了抑制生成的图像中的伪影,我们在培训过程中添加基于鉴别器的丢失函数。对定量和定性评估的广泛实验表明,我们的提出方法实现了面部表情操纵的更好性能。

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