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6-2 支持用户反馈的对话式图像检索.pdf

上传人: 云闲 编号:102533 2021-01-01 55页 4.96MB

1、01Background02Unstructured Feedback03Structured Feedback04Future Work目录 CONTENT|01BackgroundBackgroundHuge economic value of fashion domain.|BackgroundNumerous online clothing data on the Internet.Precise image retrieval that meets the users search intent is a key challenge.|BackgroundConventional p

2、aradigms for item search take either text or image as theinput query to search for items of interest.a blue overcoat with a lapel collar and a belt around the waist Text QueryImage QueryUnstructured feedback+I want the dress to be black and more professional.|Background Flexible image retrieval:allo

3、w users to use reference image and modification feedbackto search items.Structured feedback|Background Application:dialog-based fashion search/conversational fashion search At the beginning,the recommended fashionproduct image may not be the desired one.Based on this reference image,the usertypicall

4、y would like to refine the retrieval byproviding feedbacks,describing the relativedifference between the current retrievedreference image and his/her desired one.|02Structured FeedbackTask A query image can be described by itsassociated attributes:=a1,1,2,The target image can be described by:=a1,1,2

5、,Attribute Manipulation1and 2are the to-be-manipulated attributes.|Related WorkCategoryRelated WorkFeature Fusion-basedMemory-Augmented Attribute Manipulation Networks for Interactive FashionSearch,In CVPR2017.Feature Substitution-basedEfficient Multi-Attribute Similarity Learning Towards Attribute-

6、based FashionSearch,In WACV2018.Automatic Spatially-aware Fashion Concept Discovery,In ICCV2017.Learning Attribute Representations with Localization for Flexible FashionSearch,In CVPR2018.|Fusion-based Method Memory-AugmentedAttributeManipulationNetworksforInteractiveFashion Search.In CVPR2017.Attri

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本文主要探讨了时尚领域的图像检索问题,并提出了两种新的解决方案。首先,针对结构化反馈,作者提出了一种新的生成式属性操作方案,通过生成目标图像来增强内容基于的时尚搜索。其次,针对非结构化反馈,作者提出了一种综合语言视觉组合网络,通过全局和局部组合来提高图像检索的性能。实验结果表明,这两种方法在两个真实数据集上都取得了优越的性能。
如何利用生成对抗网络(GANs)提升时尚搜索的视觉理解能力? 如何将全局和局部组合方法统一应用于图像检索中的图文组合? 如何解决时尚搜索中用户修改意图难以用结构化属性表达的问题?
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