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首页> 外文期刊>IEEE transactions on industrial informatics >Learning to Match Clothing From Textual Feature-Based Compatible Relationships
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Learning to Match Clothing From Textual Feature-Based Compatible Relationships

机译:学习从基于文本功能的兼容关系匹配衣物

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摘要

This paper presents a new framework for matching clothes by considering item in-between compatibility. In contrast to the use of visual features of clothing items, we only utilized their textual descriptions, i.e., title sentences, to constitute the basic features. Specifically, a longshort-term memory (LSTM) network was used for feature embeddings of title sentences. Given item pairs of queries and candidates, their feature embeddings achieved by Siamese LSTMs were integrated into style-compatible space characterized by a compatibility matrix. Our framework is examined on three large-scaled clothing item sets collected from Amazon, Taobao, and Polyvore, respectively. Experiments confirm the efficacy of our approach compared with several baseline methods.
机译:本文通过考虑在兼容性之间进行匹配件的新框架。与使用服装项目的视觉功能相比,我们只使用了他们的文本描述,即标题句子,构成基本功能。具体地,延长术语存储器(LSTM)网络用于标题句子的特征嵌入。给定项目对查询和候选者,SIAMESE LSTMS实现的其特征嵌入物被集成到具有兼容性矩阵的样式兼容的空间中。我们的框架分别检查了从亚马逊,淘宝和多维维多瓦收集的三款大型衣服物品集。实验证实了与几种基线方法相比的方法的功效。

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