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arxiv:2512.10955

Omni-Attribute: Open-vocabulary Attribute Encoder for Visual Concept Personalization

Published on Dec 11
· Submitted by Guocheng Gordon Qian on Dec 12
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Abstract

Omni-Attribute, an open-vocabulary image attribute encoder, learns attribute-specific representations to enable precise visual concept personalization and compositional generation.

AI-generated summary

Visual concept personalization aims to transfer only specific image attributes, such as identity, expression, lighting, and style, into unseen contexts. However, existing methods rely on holistic embeddings from general-purpose image encoders, which entangle multiple visual factors and make it difficult to isolate a single attribute. This often leads to information leakage and incoherent synthesis. To address this limitation, we introduce Omni-Attribute, the first open-vocabulary image attribute encoder designed to learn high-fidelity, attribute-specific representations. Our approach jointly designs the data and model: (i) we curate semantically linked image pairs annotated with positive and negative attributes to explicitly teach the encoder what to preserve or suppress; and (ii) we adopt a dual-objective training paradigm that balances generative fidelity with contrastive disentanglement. The resulting embeddings prove effective for open-vocabulary attribute retrieval, personalization, and compositional generation, achieving state-of-the-art performance across multiple benchmarks.

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This work can isolate a specific attribute from any image and merge those selected attributes from multiple images into a coherent generation.

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