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arxiv 2403.14264 v1 pith:UTWN3RGN submitted 2024-03-21 cs.CV cs.AI

A Framework for Portrait Stylization with Skin-Tone Awareness and Nudity Identification

classification cs.CV cs.AI
keywords stylizationframeworkportraitcontentinputcharacteristicseffectivelyidentification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Portrait stylization is a challenging task involving the transformation of an input portrait image into a specific style while preserving its inherent characteristics. The recent introduction of Stable Diffusion (SD) has significantly improved the quality of outcomes in this field. However, a practical stylization framework that can effectively filter harmful input content and preserve the distinct characteristics of an input, such as skin-tone, while maintaining the quality of stylization remains lacking. These challenges have hindered the wide deployment of such a framework. To address these issues, this study proposes a portrait stylization framework that incorporates a nudity content identification module (NCIM) and a skin-tone-aware portrait stylization module (STAPSM). In experiments, NCIM showed good performance in enhancing explicit content filtering, and STAPSM accurately represented a diverse range of skin tones. Our proposed framework has been successfully deployed in practice, and it has effectively satisfied critical requirements of real-world applications.

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