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FashionBERT: Text and Image Matching with Adaptive Loss for Cross-modal Retrieval

About

In this paper, we address the text and image matching in cross-modal retrieval of the fashion industry. Different from the matching in the general domain, the fashion matching is required to pay much more attention to the fine-grained information in the fashion images and texts. Pioneer approaches detect the region of interests (i.e., RoIs) from images and use the RoI embeddings as image representations. In general, RoIs tend to represent the "object-level" information in the fashion images, while fashion texts are prone to describe more detailed information, e.g. styles, attributes. RoIs are thus not fine-grained enough for fashion text and image matching. To this end, we propose FashionBERT, which leverages patches as image features. With the pre-trained BERT model as the backbone network, FashionBERT learns high level representations of texts and images. Meanwhile, we propose an adaptive loss to trade off multitask learning in the FashionBERT modeling. Two tasks (i.e., text and image matching and cross-modal retrieval) are incorporated to evaluate FashionBERT. On the public dataset, experiments demonstrate FashionBERT achieves significant improvements in performances than the baseline and state-of-the-art approaches. In practice, FashionBERT is applied in a concrete cross-modal retrieval application. We provide the detailed matching performance and inference efficiency analysis.

Dehong Gao, Linbo Jin, Ben Chen, Minghui Qiu, Peng Li, Yi Wei, Yi Hu, Hao Wang• 2020

Related benchmarks

TaskDatasetResultRank
Image-to-Text RetrievalFashionGen (test)
R@123.96
22
Text-to-Image RetrievalFashionGen (test)
R@126.75
22
Image-Text RetrievalFashion-Gen
Rank@123.96
10
Text-Image RetrievalFashion-Gen
Rank@126.75
10
Subcategory RecognitionFashionGen (test)
Accuracy85.27
8
Image CaptioningFashionGen (test)
BLEU3.3
7
Category and SubCategory RecognitionFashion-Gen
Category Accuracy91.25
4
Category RecognitionFashionGen
Accuracy91.25
4
Subcategory RecognitionFashionGen
Accuracy85.27
4
Fashion CaptioningFashion-Gen
BLEU-43.3
3
Showing 10 of 10 rows

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