FIRST: A Million-Entry Dataset for Text-Driven Fashion Synthesis and Design

Autor: Huang, Zhen, Li, Yihao, Pei, Dong, Zhou, Jiapeng, Ning, Xuliang, Han, Jianlin, Han, Xiaoguang, Chen, Xuejun
Rok vydání: 2023
Předmět:
Druh dokumentu: Working Paper
Popis: Text-driven fashion synthesis and design is an extremely valuable part of artificial intelligence generative content(AIGC), which has the potential to propel a tremendous revolution in the traditional fashion industry. To advance the research on text-driven fashion synthesis and design, we introduce a new dataset comprising a million high-resolution fashion images with rich structured textual(FIRST) descriptions. In the FIRST, there is a wide range of attire categories and each image-paired textual description is organized at multiple hierarchical levels. Experiments on prevalent generative models trained over FISRT show the necessity of FIRST. We invite the community to further develop more intelligent fashion synthesis and design systems that make fashion design more creative and imaginative based on our dataset. The dataset will be released soon.
Comment: 11 pages, 8 figures
Databáze: arXiv