Affiliation:
1. The Hong Kong Polytechnic University
2. Shenzhen University and Shenzhen Institute of Artificial Intelligence and Robotics for Society
3. National University of Singapore
Abstract
Fashion recommendation is a key research field in computational fashion research and has attracted considerable interest in the computer vision, multimedia, and information retrieval communities in recent years. Due to the great demand for applications, various fashion recommendation tasks, such as personalized fashion product recommendation, complementary (mix-and-match) recommendation, and outfit recommendation, have been posed and explored in the literature. The continuing research attention and advances impel us to look back and in-depth into the field for a better understanding. In this article, we comprehensively review recent research efforts on fashion recommendation from a technological perspective. We first introduce fashion recommendation at a macro level and analyze its characteristics and differences with general recommendation tasks. We then clearly categorize different fashion recommendation efforts into several sub-tasks and focus on each sub-task in terms of its problem formulation, research focus, state-of-the-art methods, and limitations. We also summarize the datasets proposed in the literature for use in fashion recommendation studies to give readers a brief illustration. Finally, we discuss several promising directions for future research in this field. Overall, this survey systematically reviews the development of fashion recommendation research. It also discusses the current limitations and gaps between academic research and the real needs of the fashion industry. In the process, we offer a deep insight into how the fashion industry could benefit from the computational technologies of fashion recommendation.
Funder
Natural Science Foundation of China
NExT++
Research Grants Council of the Hong Kong SAR
Innovation and Technology Commission of Hong Kong
Publisher
Association for Computing Machinery (ACM)
Subject
General Computer Science,Theoretical Computer Science
Reference198 articles.
1. G. Mohammed Abdulla and Sumit Borar. 2017. Size recommendation system for fashion e-commerce. In KDD Workshop on Machine Learning Meets Fashion.
2. Big data, knowledge co-creation and decision making in fashion industry
3. Kenan Emir Ak, Joo Hwee Lim, Jo Yew Tham, and Ashraf Kassim. 2019. Semantically consistent hierarchical text to fashion image synthesis with an enhanced-attentional generative adversarial network. In ICCV Workshops. 3121–3124.
4. Bushra Alhijawi Arafat Awajan and Salam Fraihat. 2022. Survey on the objectives of recommender systems: measures solutions evaluation methodology and new perspectives. ACM Computing Surveys 55 5 (2022) 1–38.
5. Fashion Theory
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