Efficient Few-shot Identity Preserving Attribute Editing for 3D-aware Deep Generative Models
Vishal Vinod

TL;DR
This paper introduces a method for efficient, few-shot, identity-preserving attribute editing in 3D-aware generative face models, enabling realistic modifications with minimal labeled data and maintaining view consistency.
Contribution
It presents a novel approach that leverages existing 3D-aware models and 2D editing techniques to perform effective attribute editing with ten or fewer labeled images.
Findings
Effective attribute editing with ≤10 labeled images.
Maintains 3D view consistency during editing.
Demonstrates linearity of edits via sequential stylization.
Abstract
Identity preserving editing of faces is a generative task that enables modifying the illumination, adding/removing eyeglasses, face aging, editing hairstyles, modifying expression etc., while preserving the identity of the face. Recent progress in 2D generative models have enabled photorealistic editing of faces using simple techniques leveraging the compositionality in GANs. However, identity preserving editing for 3D faces with a given set of attributes is a challenging task as the generative model must reason about view consistency from multiple poses and render a realistic 3D face. Further, 3D portrait editing requires large-scale attribute labelled datasets and presents a trade-off between editability in low-resolution and inflexibility to editing in high resolution. In this work, we aim to alleviate some of the constraints in editing 3D faces by identifying latent space directions…
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Taxonomy
TopicsFace recognition and analysis · Generative Adversarial Networks and Image Synthesis · Facial Nerve Paralysis Treatment and Research
