Attribute-Guided Multi-Level Attention Network for Fine-Grained Fashion Retrieval

12/27/2022
by   Ling Xiao, et al.
0

This paper proposes an attribute-guided multi-level attention network (AG-MLAN) to learn fine-grained fashion similarity. AG-MLAN is able to make a more accurate attribute positioning and capture more discriminative features under the guidance of the specified attribute. Specifically, the AG-MLAN contains two branches, branch 1 aims to force the model to recognize different attributes, while branch 2 aims to learn multiple attribute-specific embedding spaces for measuring the fine-grained similarity. We first improve the Convolutional Neural Network (CNN) backbone to extract hierarchical feature representations, then the extracted feature representations are passed into branch 1 for attribute classification and branch 2 for multi-level feature extraction. In branch 2, we first propose a multi-level attention module to extract a more discriminative representation under the guidance of a specific attribute. Then, we adopt a masked embedding module to learn attribute-aware embedding. Finally, the AG-MLAN is trained with a weighted loss of the classification loss in branch 1 and the triplet loss of the masked embedding features in branch 2 to further improve the accuracy in attribute location. Extensive experiments on the DeepFashion, FashionAI, and Zappos50k datasets show the effectiveness of AG-MLAN for fine-grained fashion similarity learning and its potential for attribute-guided retrieval tasks. The proposed AG-MLAN outperforms the state-of-the-art methods in the fine-grained fashion similarity retrieval task.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset
Success!
Error Icon An error occurred

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro