FCBoost-Net: A Generative Network for Synthesizing Multiple Collocated Outfits via Fashion Compatibility Boosting
Dongliang Zhou, Haijun Zhang, Jianghong Ma, Jicong Fan, Zhao Zhang

TL;DR
FCBoost-Net is a novel generative framework that creates multiple diverse and compatible fashion outfits by iteratively boosting compatibility, addressing the lack of diversity in previous outfit generation methods.
Contribution
The paper introduces FCBoost-Net, a new generative model that enhances outfit compatibility through a boosting approach, enabling diverse and compatible outfit synthesis.
Findings
Improves fashion compatibility of generated outfits
Maintains diversity in synthesized fashion sets
Outperforms existing methods in authenticity and compatibility
Abstract
Outfit generation is a challenging task in the field of fashion technology, in which the aim is to create a collocated set of fashion items that complement a given set of items. Previous studies in this area have been limited to generating a unique set of fashion items based on a given set of items, without providing additional options to users. This lack of a diverse range of choices necessitates the development of a more versatile framework. However, when the task of generating collocated and diversified outfits is approached with multimodal image-to-image translation methods, it poses a challenging problem in terms of non-aligned image translation, which is hard to address with existing methods. In this research, we present FCBoost-Net, a new framework for outfit generation that leverages the power of pre-trained generative models to produce multiple collocated and diversified…
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Taxonomy
MethodsSparse Evolutionary Training
