AnyLogo: Symbiotic Subject-Driven Diffusion System with Gemini Status
Jinghao Zhang, Wen Qian, Hao Luo, Fan Wang, Feng Zhao

TL;DR
AnyLogo introduces a zero-shot, subject-driven diffusion system that achieves high detail consistency and efficiency in logo customization without complex configurations, enhancing applicability across diverse scenarios.
Contribution
The paper presents AnyLogo, a novel zero-shot region customizer leveraging a symbiotic diffusion system with Gemini status for improved signature extraction and content generation.
Findings
Effective logo-level customization with high detail fidelity.
Enhanced subject transmission efficiency and semantic coherence.
Validated on logo benchmarks demonstrating practical superiority.
Abstract
Diffusion models have made compelling progress on facilitating high-throughput daily production. Nevertheless, the appealing customized requirements are remain suffered from instance-level finetuning for authentic fidelity. Prior zero-shot customization works achieve the semantic consistence through the condensed injection of identity features, while addressing detailed low-level signatures through complex model configurations and subject-specific fabrications, which significantly break the statistical coherence within the overall system and limit the applicability across various scenarios. To facilitate the generic signature concentration with rectified efficiency, we present \textbf{AnyLogo}, a zero-shot region customizer with remarkable detail consistency, building upon the symbiotic diffusion system with eliminated cumbersome designs. Streamlined as vanilla image generation, we…
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Taxonomy
TopicsNonlinear Dynamics and Pattern Formation
MethodsDiffusion
