可解释的分割嵌入,用于定制多件时装组合

Zunlei Feng, Zhenyun Yu, Yezhou Yang, Yongcheng Jing, Junxiao Jiang, Mingli Song
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引用次数: 31

摘要

近年来,智能时尚服装构图越来越流行。最近一些基于深度学习的方法揭示了竞争成分。然而,这种基于深度学习的方法的不可解释性使得这种方法无法满足设计师、企业和消费者对服装构成中不同属性重要性的理解。为了实现可解释和可定制的多项目时装组合,我们提出了一种分区嵌入网络,从服装项目中学习可解释的嵌入。该网络由两个重要部分组成:属性划分模块和划分对抗模块。在属性划分模块中,采用了多个属性标签,保证整体嵌入的不同部分对应不同的属性。在分区对抗模块中,采用对抗操作实现各部分的独立性。利用可解释和可分割的嵌入,构造了装备组合图和属性匹配图。大量的实验表明:1)分割嵌入具有对应不同属性的未混合部分;2)与现有方法相比,我们的模型推荐的组合更理想。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Partitioned Embedding for Customized Multi-item Fashion Outfit Composition
Intelligent fashion outfit composition becomes more and more popular in these years. Some deep learning based approaches reveal competitive composition recently. However, the uninterpretable characteristic makes such deep learning based approach cannot meet the designers, businesses and consumers' urge to comprehend the importance of different attributes in an outfit composition. To realize interpretable and customized multi-item fashion outfit compositions, we propose a partitioned embedding network to learn interpretable embeddings from clothing items. The network consists of two vital components: attribute partition module and partition adversarial module. In the attribute partition module, multiple attribute labels are adopted to ensure that different parts of the overall embedding correspond to different attributes. In the partition adversarial module, adversarial operations are adopted to achieve the independence of different parts. With the interpretable and partitioned embedding, we then construct an outfit composition graph and an attribute matching map. Extensive experiments demonstrate that 1) the partitioned embedding have unmingled parts which corresponding to different attributes and 2) outfits recommended by our model are more desirable in comparison with the existing methods.
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