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📄 Abstract
Abstract: Specialized datasets that capture the fashion industry's rich language and
styling elements can boost progress in AI-driven fashion design. We present
FLORA, (Fashion Language Outfit Representation for Apparel Generation), the
first comprehensive dataset containing 4,330 curated pairs of fashion outfits
and corresponding textual descriptions. Each description utilizes
industry-specific terminology and jargon commonly used by professional fashion
designers, providing precise and detailed insights into the outfits. Hence, the
dataset captures the delicate features and subtle stylistic elements necessary
to create high-fidelity fashion designs.
We demonstrate that fine-tuning generative models on the FLORA dataset
significantly enhances their capability to generate accurate and stylistically
rich images from textual descriptions of fashion sketches. FLORA will catalyze
the creation of advanced AI models capable of comprehending and producing
subtle, stylistically rich fashion designs. It will also help fashion designers
and end-users to bring their ideas to life.
As a second orthogonal contribution, we introduce NeRA (Nonlinear low-rank
Expressive Representation Adapter), a novel adapter architecture based on
Kolmogorov-Arnold Networks (KAN). Unlike traditional PEFT techniques such as
LoRA, LoKR, DoRA, and LoHA that use MLP adapters, NeRA uses learnable
spline-based nonlinear transformations, enabling superior modeling of complex
semantic relationships, achieving strong fidelity, faster convergence and
semantic alignment. Extensive experiments on our proposed FLORA and LAION-5B
datasets validate the superiority of NeRA over existing adapters.
We will open-source both the FLORA dataset and our implementation code.
Key Contributions
Introduces FLORA, the first comprehensive dataset (4,330 pairs) for AI-powered fashion outfit generation using industry-specific terminology. It also proposes a novel KAN Adapter for enhanced feature adaptation in generative models, demonstrating significant improvements in generating accurate and stylistically rich fashion images from text.
Business Value
Accelerates innovation in the fashion industry by providing tools for AI-assisted design, personalized recommendations, and virtual try-on experiences, potentially reducing design cycles and improving customer engagement.