A Tale of Color Variants: Representation and Self-Supervised Learning in Fashion E-Commerce
Ujjal Kr Dutta, Sandeep Repakula, Maulik Parmar, Abhinav Ravi

TL;DR
This paper explores using self-supervised learning with color jitter augmentation to identify color variants in fashion e-commerce, achieving performance comparable to supervised methods without manual annotations.
Contribution
It demonstrates that self-supervised learning with color invariance can effectively identify fashion style variants, reducing reliance on manual annotations.
Findings
SSL methods perform comparably to supervised approaches
Color jitter augmentation enhances invariance to color variations
Proposed a novel SSL method for fashion variant recognition
Abstract
In this paper, we address a crucial problem in fashion e-commerce (with respect to customer experience, as well as revenue): color variants identification, i.e., identifying fashion products that match exactly in their design (or style), but only to differ in their color. We propose a generic framework, that leverages deep visual Representation Learning at its heart, to address this problem for our fashion e-commerce platform. Our framework could be trained with supervisory signals in the form of triplets, that are obtained manually. However, it is infeasible to obtain manual annotations for the entire huge collection of data usually present in fashion e-commerce platforms, such as ours, while capturing all the difficult corner cases. But, to our rescue, interestingly we observed that this crucial problem in fashion e-commerce could also be solved by simple color jitter based image…
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Taxonomy
Topicsmelanin and skin pigmentation · Color Science and Applications
