2019
DOI: 10.1109/tmm.2018.2876822
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Multi-Modal and Multi-Domain Embedding Learning for Fashion Retrieval and Analysis

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Cited by 38 publications
(15 citation statements)
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“…Reasoning about the similarity between images or data of different modalities is an inherent challenge in computer vision. Beyond its prevalence in fundamental problems such as image-sentence retrieval [41,38], cross-domain image-matching [32,16], attribution learning [4,33] and visual categorization [29], it also has an increasingly prominent role in computer vision problems in the fashion and retail domains like outfit style modeling [14], fashion item retrieval and recommendation [10,22] and automatic capsule wardrobe generation [15]. Metric learning (the task of learning a distance function between features based on supervised similar/dissimilar pairs) is a common approach 1 https://github.com/rxtan2/ Learning-Similarity-Conditions Figure 1: We propose the SCE-Net model for learning multi-faceted similarity between images, such as compatibility of two fashion items.…”
Section: Introductionmentioning
confidence: 99%
“…Reasoning about the similarity between images or data of different modalities is an inherent challenge in computer vision. Beyond its prevalence in fundamental problems such as image-sentence retrieval [41,38], cross-domain image-matching [32,16], attribution learning [4,33] and visual categorization [29], it also has an increasingly prominent role in computer vision problems in the fashion and retail domains like outfit style modeling [14], fashion item retrieval and recommendation [10,22] and automatic capsule wardrobe generation [15]. Metric learning (the task of learning a distance function between features based on supervised similar/dissimilar pairs) is a common approach 1 https://github.com/rxtan2/ Learning-Similarity-Conditions Figure 1: We propose the SCE-Net model for learning multi-faceted similarity between images, such as compatibility of two fashion items.…”
Section: Introductionmentioning
confidence: 99%
“…In fashion recommendation, for example, Li et al [21] score and recommend fashion outfit candidates based on the appearances and metadata, Han et al [11] learn a visual-semantic space to not only perform the aforementioned recommendations but also predict the compatibility of a given outfit, Chen et al [5] propose a novel neural architecture for fashion recommendation based on both image region-level features and user review information, Wu et al [39] propose a visual and textual jointly enhanced interpretable model for fashion recommendations. In fashion retrieval, Liao et al [22] utilize an EI-tree which can cooperate with deep models for end-toend multimodal learning, Gu et al [8], Guo et al [9], Yuan and Lam [42] propose a multimodal framework for fashion analysis and data retrieval, Ma et al [25] forecast the fashion trend by a knowledge enhanced recurrent network model.…”
Section: Multimodality In Fashion Related Tasksmentioning
confidence: 99%
“…Fashion design based on big data is now a widely used approach that greatly improves the success of design. 25…”
Section: Fashion Design Based On Big Datamentioning
confidence: 99%