Biphasic Face Photo-Sketch Synthesis via Semantic-Driven Generative Adversarial Network with Graph Representation Learning
Xingqun Qi, Muyi Sun, Zijian Wang, Jiaming Liu, Qi Li, Fang Zhao,, Shanghang Zhang, Caifeng Shan

TL;DR
This paper introduces a novel semantic-driven GAN with graph learning for biphasic face photo-sketch synthesis, improving detail realism and structural consistency over previous methods.
Contribution
It proposes a semantic layout injection and graph-based facial structure modeling within a GAN framework for enhanced photo-sketch synthesis.
Findings
Outperforms state-of-the-art on CUFS and CUFSF datasets.
Produces more realistic and structurally consistent face sketches.
Enhances detail fidelity through graph-based semantic modeling.
Abstract
Biphasic face photo-sketch synthesis has significant practical value in wide-ranging fields such as digital entertainment and law enforcement. Previous approaches directly generate the photo-sketch in a global view, they always suffer from the low quality of sketches and complex photo variations, leading to unnatural and low-fidelity results. In this paper, we propose a novel Semantic-Driven Generative Adversarial Network to address the above issues, cooperating with Graph Representation Learning. Considering that human faces have distinct spatial structures, we first inject class-wise semantic layouts into the generator to provide style-based spatial information for synthesized face photos and sketches. Additionally, to enhance the authenticity of details in generated faces, we construct two types of representational graphs via semantic parsing maps upon input faces, dubbed the…
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Taxonomy
TopicsFace recognition and analysis · Generative Adversarial Networks and Image Synthesis
