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A Strong Baseline for Fashion Retrieval with Person Re-Identification Models

2020-03-09 12:50:15
Mikolaj Wieczorek (1), Andrzej Michalowski (1), Anna Wroblewska (1 and 2), Jacek Dabrowski (1) ((1) Synerise, (2) Warsaw University of Technology)

Abstract

Fashion retrieval is the challenging task of finding an exact match for fashion items contained within an image. Difficulties arise from the fine-grained nature of clothing items, very large intra-class and inter-class variance. Additionally, query and source images for the task usually come from different domains - street photos and catalogue photos respectively. Due to these differences, a significant gap in quality, lighting, contrast, background clutter and item presentation exists between domains. As a result, fashion retrieval is an active field of research both in academia and the industry. Inspired by recent advancements in Person Re-Identification research, we adapt leading ReID models to be used in fashion retrieval tasks. We introduce a simple baseline model for fashion retrieval, significantly outperforming previous state-of-the-art results despite a much simpler architecture. We conduct in-depth experiments on Street2Shop and DeepFashion datasets and validate our results. Finally, we propose a cross-domain (cross-dataset) evaluation method to test the robustness of fashion retrieval models.

Abstract (translated)

URL

https://arxiv.org/abs/2003.04094

PDF

https://arxiv.org/pdf/2003.04094.pdf


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