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A Crowd-Powered System for Fashion Similarity Search

机译:人群相似的时尚相似度搜索系统

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摘要

Driven by the needs of customers and industry, online fashion search and analytics are recently gaining much attention. As fashion is mostly expressed by visual content, the analysis of fashion images in online social networks is a rich source of possible insights on evolving trends and customer preferences. Although a plethora of visual content is available, the modeling of clothes' physics and movement, the implicit semantics in fashion designs, and the subjectivity of their interpretation pose difficulties to fully automated solutions for fashion search and analysis. In this article, we present the design and evaluation of a crowd-powered system for fashion similarity search from Twitter, supporting trend analysis for fashion professionals. The system enables fashion similarity search based on specific human-based similarity criteria. This is achieved by implementing a novel machine-crowd workflow that supports complex tasks requiring highly subjective judgments where multiple true solutions may coexist. We discuss how this leads to a novel class of crowd-powered systems for which the output of the crowd is not used to verify the automatic analysis but is the desired outcome. Finally, we show how this kind of crowd involvement enables a novel kind of similarity search and represents a crucial factor for the acceptance of system results by the end user.
机译:在客户和行业需求的推动下,在线时尚搜索和分析最近受到了广泛关注。由于时尚主要由视觉内容来表达,因此在线社交网络中对时尚图像的分析是对不断发展的趋势和客户偏好的深入见解的丰富来源。尽管有大量的视觉内容可供使用,但服装物理和运动的建模,时装设计中的隐含语义以及其解释的主观性给全自动的时装搜索和分析解决方案带来了困难。在本文中,我们介绍了一种由人群驱动的Twitter相似度搜索系统的设计和评估,该系统支持时尚专业人士的趋势分析。该系统能够基于特定的基于人类的相似性标准进行时尚相似性搜索。这是通过实现一种新颖的机器拥挤的工作流来实现的,该工作流支持需要高度主观判断的复杂任务,在此情况下可能存在多个真实解决方案。我们将讨论这如何导致一类新型的人群供电系统,对于该系统,人群的输出不会用于验证自动分析,而是期望的结果。最后,我们展示了这种人群参与如何实现新颖的相似性搜索,并代表了最终用户接受系统结果的关键因素。

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