给我买那个造型:一种推荐相似时尚产品的方法

Abhinav Ravi, Sandeep Repakula, U. Dutta, Maulik Parmar
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引用次数: 7

摘要

你有没有看过Instagram上的模特,或者时尚电子商务网页上的模特,然后想“希望我能得到一份和模特穿的相似的时尚单品清单!”这就是我们在本文中要解决的问题,我们提出了一种新的基于计算机视觉的技术,称为ShopLook,以解决推荐类似时尚产品的挑战性问题。该方法已经在时尚电子商务平台Myntra (www.myntra.com)进行了验证。特别是,给定用户查询和对应的产品显示页面(Product Display Page, PDP),我们的方法的目标是推荐与PDP全裸图像(从头到脚展示整个模型的图像)中模特所穿的整套时尚物品相对应的类似时尚产品。我们的方法的新颖性和优势在于它能够为模特所穿的所有时尚单品推荐类似的物品,除了与查询相对应的主要物品。这不仅对促进交叉销售以增加收入很重要,而且对改善客户体验和用户粘性也很重要。此外,我们的方法还能够为用户生成内容(UGC)推荐类似的产品,例如:、用户上传的时尚文章图片。正式地,我们提出的方法由以下部分组成(顺序相同):i)人体关键点检测,ii)姿态分类,iii)文章定位和目标检测,以及主动学习反馈,iv)基于Triplet网络的图像嵌入模型。
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Buy Me That Look: An Approach for Recommending Similar Fashion Products
Have you ever looked at an Instagram model, or a model in a fashion e-commerce web-page, and thought "Wish I could get a list of fashion items similar to the ones worn by the model!". This is what we address in this paper, where we propose a novel computer vision based technique called ShopLook to address the challenging problem of recommending similar fashion products. The proposed method has been evaluated at Myntra (www.myntra.com), a leading online fashion e-commerce platform. In particular, given a user query and the corresponding Product Display Page (PDP) against the query, the goal of our method is to recommend similar fashion products corresponding to the entire set of fashion articles worn by a model in the PDP full-shot image (the one showing the entire model from head to toe). The novelty and strength of our method lies in its capability to recommend similar articles for all the fashion items worn by the model, in addition to the primary article corresponding to the query. This is not only important to promote cross-sells for boosting revenue, but also for improving customer experience and engagement. In addition, our approach is also capable of recommending similar products for User Generated Content (UGC), eg., fashion article images uploaded by users. Formally, our proposed method consists of the following components (in the same order): i) Human keypoint detection, ii) Pose classification, iii) Article localisation and object detection, along with active learning feedback, and iv) Triplet network based image embedding model.
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