CVLGFeb 7, 2020

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

arXiv:2002.02814v159 citations
AI Analysis

This addresses fashion copyright protection and related applications, but is incremental as it builds on existing similarity learning methods.

The paper tackled the problem of learning fine-grained fashion similarity by focusing on specific attributes, proposing an Attribute-Specific Embedding Network (ASEN) that achieved effectiveness in experiments on four datasets.

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.

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