Technologies for AI-Driven Fashion Social Networking Service with E-Commerce

Information

Title Technologies for AI-Driven Fashion Social Networking Service with E-Commerce
Authors
Jinseok Seol, Seongjae Kim, Sungchan Park, Holim Lim, Hyunsoo Na, Eunyoung Park, Dohee Jung, Soyoung Park, Kangwoo Lee, Sang-goo Lee
Year 2022 / 5
Keywords Fashion AI, AI-Driven SNS, Visual Search, Recommender System
Acknowledgement IITP
Publication Type International Conference
Publication International Semantic Intelligence Conference (ISIC), The Applications and Deployment Track
Link url

Abstract

The rapid growth of the online fashion market brought demands for innovative fashion services and commerce platforms. With the recent success of deep learning, many applications employ AI technologies such as visual search and recommender systems to provide novel and beneficial services. In this paper, we describe applied technologies for AI-driven fashion social networking service that incorporate fashion e-commerce. In the application, people can share and browse their outfit-of-the-day (OOTD) photos, while AI analyzes them and suggests similar style OOTDs and related products. To this end, we trained deep learning based AI models for fashion and integrated them to build a fashion visual search system and a recommender system for OOTD. With aforementioned technologies, the AI-driven fashion SNS platform, iTOO, has been successfully launched.