基于计算机视觉的个性化服装辅助系统:一个提出的模型

B. Kalra, Kingshuk Srivastava, M. Prateek
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引用次数: 4

摘要

包括时尚产业在内的电子商务(全球)预计到2020年将达到350亿美元大关。有一种应用程序可以帮助用户在日常在线购物中做出明智的决定。在本文中,我们的目标是建立一个能够理解时尚和用户的系统,为用户提供个性化的服装推荐。我们的方法包括Caffe,这是一个用于计算机视觉任务(如服装类型分类和服装属性分类)的深度学习框架。此外,我们使用条件随机场(CRF)来学习时尚的复杂性。crf还了解用户的种族、体型等属性、专家意见和服装类型之间的相关性。我们期望拟议的系统能够提供个性化的推荐。
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Computer vision based personalized clothing assistance system: A proposed model
With fashion industry included e-commerce (worldwide) is expected to hit the $35 billion mark by 2020. There's a need for applications which help the user in making intelligent decisions on their day to day online purchases. In this paper, our aim is to build a system that would be able to understand fashion and the user to provide personalized clothing recommendations to the user. Our approach includes Caffe, a deep learning framework for computer vision tasks such as Clothing type classification and Clothing attribute classification. Furthermore we use Conditional Random Fields (CRF) to learn the intricacies of fashion. CRFs also learn the correlations between attributes of the user such as ethnicity, body type etc., expert opinion and the type of outfit. We expect the proposed system would be able to provide personalized recommendations.
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