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Papers/A Strong Baseline for Fashion Retrieval with Person Re-Ide...

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

Mikolaj Wieczorek, Andrzej Michalowski, Anna Wroblewska, Jacek Dabrowski

2020-03-09RetrievalImage Retrieval
PaperPDFCode(official)

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.

Results

TaskDatasetMetricValueModel
Image RetrievalDeepFashion - Consumer-to-shopRank-137.8RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalDeepFashion - Consumer-to-shopRank-1071.1RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalDeepFashion - Consumer-to-shopRank-2077.2RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalDeepFashion - Consumer-to-shopRank-5084.1RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalDeepFashion - Consumer-to-shopmAP43RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalExact Street2ShopRank-153.7RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalExact Street2ShopRank-1069.8RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalExact Street2ShopRank-2073.6RST Model (ResNet50-IBN-A, 320x320)
Image RetrievalExact Street2ShopmAP46.8RST Model (ResNet50-IBN-A, 320x320)

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