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FashionSAP: Symbols and Attributes Prompt for Fine-grained Fashion Vision-Language Pre-training

About

Fashion vision-language pre-training models have shown efficacy for a wide range of downstream tasks. However, general vision-language pre-training models pay less attention to fine-grained domain features, while these features are important in distinguishing the specific domain tasks from general tasks. We propose a method for fine-grained fashion vision-language pre-training based on fashion Symbols and Attributes Prompt (FashionSAP) to model fine-grained multi-modalities fashion attributes and characteristics. Firstly, we propose the fashion symbols, a novel abstract fashion concept layer, to represent different fashion items and to generalize various kinds of fine-grained fashion features, making modelling fine-grained attributes more effective. Secondly, the attributes prompt method is proposed to make the model learn specific attributes of fashion items explicitly. We design proper prompt templates according to the format of fashion data. Comprehensive experiments are conducted on two public fashion benchmarks, i.e., FashionGen and FashionIQ, and FashionSAP gets SOTA performances for four popular fashion tasks. The ablation study also shows the proposed abstract fashion symbols, and the attribute prompt method enables the model to acquire fine-grained semantics in the fashion domain effectively. The obvious performance gains from FashionSAP provide a new baseline for future fashion task research.

Yunpeng Han, Lisai Zhang, Qingcai Chen, Zhijian Chen, Zhonghua Li, Jianxin Yang, Zhao Cao• 2023

Related benchmarks

TaskDatasetResultRank
Composed Image RetrievalFashionIQ (val)
Shirt Recall@1041.91
455
Composed Image RetrievalFashion-IQ (test)
Dress Recall@100.3371
145
Image-to-Text RetrievalFashionGen (test)
R@173.14
22
Text-to-Image RetrievalFashionGen (test)
R@170.12
22
Cross-modal retrievalFashionGen full 31 (test)
Recall@158.63
6
Image-to-Text RetrievalFashionGen 31 (test)
Recall@154.43
6
Text-to-Image RetrievalFashionGen 31 (test)
R@162.82
6
Category RecognitionFashionGen
Accuracy98.34
4
Subcategory RecognitionFashionGen
Accuracy94.33
4
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