An Effective Pipeline for a Real-world Clothes Retrieval System
In this paper, we propose an effective pipeline for clothes retrieval system which has sturdiness on large-scale real-world fashion data. Our proposed method consists of three components: detection, retrieval, and post-processing. We firstly conduct a detection task for precise retrieval on target c...
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Zusammenfassung: | In this paper, we propose an effective pipeline for clothes retrieval system
which has sturdiness on large-scale real-world fashion data. Our proposed
method consists of three components: detection, retrieval, and post-processing.
We firstly conduct a detection task for precise retrieval on target clothes,
then retrieve the corresponding items with the metric learning-based model. To
improve the retrieval robustness against noise and misleading bounding boxes,
we apply post-processing methods such as weighted boxes fusion and feature
concatenation. With the proposed methodology, we achieved 2nd place in the
DeepFashion2 Clothes Retrieval 2020 challenge. |
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DOI: | 10.48550/arxiv.2005.12739 |