S2-Flow: Joint Semantic and Style Editing of Facial Images

Krishnakant Singh, Simone Schaub-Meyer, S. Roth
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引用次数: 1

Abstract

The high-quality images yielded by generative adversarial networks (GANs) have motivated investigations into their application for image editing. However, GANs are often limited in the control they provide for performing specific edits. One of the principal challenges is the entangled latent space of GANs, which is not directly suitable for performing independent and detailed edits. Recent editing methods allow for either controlled style edits or controlled semantic edits. In addition, methods that use semantic masks to edit images have difficulty preserving the identity and are unable to perform controlled style edits. We propose a method to disentangle a GAN$\text{'}$s latent space into semantic and style spaces, enabling controlled semantic and style edits for face images independently within the same framework. To achieve this, we design an encoder-decoder based network architecture ($S^2$-Flow), which incorporates two proposed inductive biases. We show the suitability of $S^2$-Flow quantitatively and qualitatively by performing various semantic and style edits.
S2-Flow:面部图像语义与风格的联合编辑
生成对抗网络(GANs)产生的高质量图像引发了对其在图像编辑中的应用的研究。然而,gan通常在提供执行特定编辑的控制方面受到限制。其中一个主要的挑战是gan的纠缠潜在空间,它不适合直接进行独立和详细的编辑。最近的编辑方法允许控制样式编辑或控制语义编辑。此外,使用语义掩码编辑图像的方法难以保留身份,并且无法执行受控样式编辑。我们提出了一种将GAN$\text{'}$s潜在空间分解为语义和样式空间的方法,从而在同一框架内实现对人脸图像的受控语义和样式编辑。为了实现这一点,我们设计了一个基于编码器-解码器的网络架构($S^2$-Flow),它包含了两个提出的归纳偏置。我们通过执行各种语义和风格编辑,定量和定性地展示了$S^2$-Flow的适用性。
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