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arxiv 2410.24151 v1 pith:7KWTRPCR submitted 2024-10-31 cs.CV cs.CL

Scaling Concept With Text-Guided Diffusion Models

classification cs.CV cs.CL
keywords conceptsconceptdiffusionmodelstext-guidedapproachdecomposedgenerative
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Text-guided diffusion models have revolutionized generative tasks by producing high-fidelity content from text descriptions. They have also enabled an editing paradigm where concepts can be replaced through text conditioning (e.g., a dog to a tiger). In this work, we explore a novel approach: instead of replacing a concept, can we enhance or suppress the concept itself? Through an empirical study, we identify a trend where concepts can be decomposed in text-guided diffusion models. Leveraging this insight, we introduce ScalingConcept, a simple yet effective method to scale decomposed concepts up or down in real input without introducing new elements. To systematically evaluate our approach, we present the WeakConcept-10 dataset, where concepts are imperfect and need to be enhanced. More importantly, ScalingConcept enables a variety of novel zero-shot applications across image and audio domains, including tasks such as canonical pose generation and generative sound highlighting or removal.

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