Face Sketch Synthesis via Semantic-Driven Generative Adversarial Network

Xingqun Qi, Muyi Sun, Weining Wang, Xiaoxiao Dong, Qi Li, Caifeng Shan
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引用次数: 8

Abstract

Face sketch synthesis has made significant progress with the development of deep neural networks in these years. The delicate depiction of sketch portraits facilitates a wide range of applications like digital entertainment and law enforcement. However, accurate and realistic face sketch generation is still a challenging task due to the illumination variations and complex backgrounds in the real scenes. To tackle these challenges, we propose a novel Semantic-Driven Generative Adversarial Network (SDGAN) which embeds global structure-level style injection and local class-level knowledge re-weighting. Specifically, we conduct facial saliency detection on the input face photos to provide overall facial texture structure, which could be used as a global type of prior information. In addition, we exploit face parsing layouts as the semantic-level spatial prior to enforce globally structural style injection in the generator of SDGAN. Furthermore, to enhance the realistic effect of the details, we propose a novel Adaptive Re-weighting Loss (ARLoss) which dedicates to balance the contributions of different semantic classes. Experimentally, our extensive experiments on CUFS and CUFSF datasets show that our proposed algorithm achieves state-of-the-art performance.
基于语义驱动生成对抗网络的人脸草图合成
近年来,随着深度神经网络的发展,人脸素描合成取得了重大进展。素描肖像的精致描绘促进了广泛的应用,如数字娱乐和执法。然而,由于真实场景中光照的变化和背景的复杂,准确逼真的人脸素描生成仍然是一个具有挑战性的任务。为了解决这些挑战,我们提出了一种新的语义驱动生成对抗网络(SDGAN),它嵌入了全局结构级风格注入和局部类级知识重加权。具体来说,我们对输入的人脸照片进行面部显著性检测,提供整体的面部纹理结构,作为一种全局类型的先验信息。此外,我们利用面部解析布局作为语义级空间先验,在SDGAN生成器中强制全局结构风格注入。此外,为了增强细节的逼真效果,我们提出了一种新的自适应重加权损失(ARLoss),它致力于平衡不同语义类的贡献。实验上,我们在CUFS和CUFSF数据集上的大量实验表明,我们提出的算法达到了最先进的性能。
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