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Fine-Grained Fashion Similarity Learning by Attribute-Specific Embedding Network

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This paper strives to learn fine-grained fashion similarity. In this similarity paradigm, one should pay more attention to the similarity in terms of a specific design/attribute among fashion items, which has potential values in many fashion related applications such as fashion copyright protection. To this end, we propose an Attribute-Specific Embedding Network (ASEN) to jointly learn multiple attribute-specific embeddings in an end-to-end manner, thus measure the fine-grained similarity in the corresponding space. With two attention modules, i.e., Attribute-aware Spatial Attention and Attribute-aware Channel Attention, ASEN is able to locate the related regions and capture the essential patterns under the guidance of the specified attribute, thus make the learned attribute-specific embeddings better reflect the fine-grained similarity. Extensive experiments on four fashion-related datasets show the effectiveness of ASEN for fine-grained fashion similarity learning and its potential for fashion reranking.

Zhe Ma, Jianfeng Dong, Yao Zhang, Zhongzi Long, Yuan He, Hui Xue, Shouling Ji• 2020

Related benchmarks

TaskDatasetResultRank
Fine-grained fashion image retrievalDeepFashion (test)
MAP (Texture)15.52
11
Fine-grained Image RetrievalFashionAI, DeepFashion, and DARN Sequential
Total Training Time (h)77.07
11
Fine-grained fashion image retrievalFashionAI (test)
MAP (Skirt Length)64.57
11
Fine-grained fashion image retrievalDARN (test)
MAP (Clothes Category)7.75
11
Customized fashion retrievalDeepFashion (test)
Texture15.13
10
Fine-grained Image RetrievalDARN
Training Time (h)41.27
8
Fine-grained Image RetrievalFashionAI
Training Time (h)14
8
Fine-grained Image RetrievalDeepFashion
Training Time (h)21.8
8
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