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Facial Expression Generation from Text with FaceCLIP
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作者 Wen-Wen Fu Wen-Juan Gong +2 位作者 Chen-Yang Yu Wei Wang Jordi Gonzàlez 《Journal of Computer Science & Technology》 2025年第2期359-377,共19页
Facial expression generation from pure textual descriptions is widely applied in human-computer interaction,computer-aided design,assisted education,etc.However,this task is challenging due to the intricate facial str... Facial expression generation from pure textual descriptions is widely applied in human-computer interaction,computer-aided design,assisted education,etc.However,this task is challenging due to the intricate facial structure and the complex mapping between texts and images.Existing methods face limitations in generating high-resolution images or capturing diverse facial expressions.In this study,we propose a novel generation approach,named FaceCLIP,to tackle these problems.The proposed method utilizes a CLIP-based multi-stage generative adversarial model to produce vivid facial expressions with high resolutions.With strong semantic priors from multi-modal textual and visual cues,the proposed method effectively disentangles facial attributes,enabling attribute editing and semantic reasoning.To facilitate text-toexpression generation,we build a new dataset called the FET dataset,which contains facial expression images and corresponding textual descriptions.Experiments on the dataset demonstrate improved image quality and semantic consistency compared with state-of-the-art methods. 展开更多
关键词 facial expression generation contrastive language-image pre-training(CLIP) MULTI-STAGE generative adversarial network(GAN)
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