MaTe3D: Mask-guided Text-based 3D-aware Portrait Editing
CoRR(2023)
摘要
Recently, 3D-aware face editing has witnessed remarkable progress. Although
current approaches successfully perform mask-guided or text-based editing,
these properties have not been combined into a single method. To address this
limitation, we propose \textbf{MaTe3D}: mask-guided text-based 3D-aware
portrait editing. First, we propose a new SDF-based 3D generator. To better
perform masked-based editing (mainly happening in local areas), we propose SDF
and density consistency losses, aiming to effectively model both the global and
local representations jointly. Second, we introduce an inference-optimized
method. We introduce two techniques based on the SDS (Score Distillation
Sampling), including a blending SDS and a conditional SDS. The former aims to
overcome the mismatch problem between geometry and appearance, ultimately
harming fidelity. The conditional SDS contributes to further producing
satisfactory and stable results. Additionally, we create CatMask-HQ dataset, a
large-scale high-resolution cat face annotations. We perform experiments on
both the FFHQ and CatMask-HQ datasets to demonstrate the effectiveness of the
proposed method. Our method generates faithfully a edited 3D-aware face image
given a modified mask and a text prompt. Our code and models will be publicly
released.
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