An Application to Generate Style Guided Compatible Outfit
- URL: http://arxiv.org/abs/2205.00663v1
- Date: Mon, 2 May 2022 05:45:05 GMT
- Title: An Application to Generate Style Guided Compatible Outfit
- Authors: Debopriyo Banerjee, Harsh Maheshwari, Lucky Dhakad1, Arnab
Bhattacharya1, Niloy Ganguly, Muthusamy Chelliah and Suyash Agarwal1
- Abstract summary: We aim to generate outfits guided by styles or themes using a novel style encoder network.
We present an extensive analysis of different aspects of our method through various experiments.
- Score: 16.63265212958939
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fashion recommendation has witnessed a phenomenal growth of research,
particularly in the domains of shop-the-look, contextaware outfit creation,
personalizing outfit creation etc. Majority of the work in this area focuses on
better understanding of the notion of complimentary relationship between
lifestyle items. Quite recently, some works have realised that style plays a
vital role in fashion, especially in the understanding of compatibility
learning and outfit creation. In this paper, we would like to present the
end-to-end design of a methodology in which we aim to generate outfits guided
by styles or themes using a novel style encoder network. We present an
extensive analysis of different aspects of our method through various
experiments. We also provide a demonstration api to showcase the ability of our
work in generating outfits based on an anchor item and styles.
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