핵심 개념
AI-driven DiFashion enhances personalized outfit generation and recommendation through innovative generative models.
초록
DiFashion introduces Generative Outfit Recommendation (GOR) to synthesize visually harmonious outfits tailored to individual users. It utilizes exceptional diffusion models for parallel image generation, focusing on high fidelity, compatibility, and personalization. Three key conditions guide the generation process: category prompt, mutual condition, and history condition. Extensive experiments on iFashion and Polyvore-U datasets demonstrate DiFashion's superiority over competitive baselines in both PFITB and GOR tasks.
통계
12,806 users in iFashion dataset
19,882 outfits in iFashion dataset
344,186 items in iFashion dataset
107,396 interactions in iFashion dataset
517 users in Polyvore-U dataset
33,906 outfits in Polyvore-U dataset
119,202 items in Polyvore-U dataset
33,908 interactions in Polyvore-U dataset
인용구
"DiFashion harnesses exceptional diffusion models for the simultaneous generation of multiple fashion images."
"Extensive experiments highlight the superiority of DiFashion over competitive baselines."