Unposed: Unsupervised Pose Estimation based Product Image Recommendations

Saurabh Sharma, Faizan Ahemad
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引用次数: 1

Abstract

Product images are the most impressing medium of customer interaction on the product detail pages of e-commerce websites. Millions of products are onboarded on to webstore catalogues daily and maintaining a high quality bar for a product’s set of images is a problem at scale. Grouping products by categories, clothing is a very high volume and high velocity category and thus deserves its own attention. Given the scale it is challenging to monitor the completeness of image set, which adequately details the product for the consumers, which in turn often leads to a poor customer experience and thus customer drop off. To supervise the quality and completeness of the images in the product pages for these product types and suggest improvements, we propose a Human Pose Detection based unsupervised method to scan the image set of a product for the missing ones. The unsupervised approach suggests a fair approach to sellers based on product and category irrespective of any biases. We first create a reference image set of popular products with wholesome imageset. Then we create clusters of images to label most desirable poses to form the classes for the reference set from these ideal products set. Further, for all test products we scan the images for all desired pose classes w.r.t. reference set poses, determine the missing ones and sort them in the order of potential impact. These missing poses can further be used by the sellers to add enriched product listing image. We gathered data from popular online webstore and surveyed ~200 products manually, a large fraction of which had at least 1 repeated image or missing variant, and sampled 3K products(~20K images) of which a significant proportion had scope for adding many image variants as compared to high rated products which had more than double image variants, indicating that our model can potentially be used on a large scale.
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Unposed:基于产品图像推荐的无监督姿态估计
在电子商务网站的产品详情页面中,产品图片是客户互动最重要的媒介。每天都有数以百万计的产品出现在网上商店的目录中,在规模上维护一个高质量的产品图片栏是一个问题。按品类分类,服装是一个体量大、速度快的品类,值得关注。考虑到规模,监控图像集的完整性是具有挑战性的,这些图像集为消费者提供了充分的产品细节,这反过来往往会导致糟糕的客户体验,从而导致客户流失。为了监督这些产品类型的产品页面中图像的质量和完整性并提出改进建议,我们提出了一种基于人体姿态检测的无监督方法来扫描产品图像集以寻找缺失的图像。无监督的方法建议对卖家采取一种基于产品和类别的公平方法,而不考虑任何偏见。我们首先用健康的图像集创建一个流行产品的参考图像集。然后,我们创建图像簇来标记最理想的姿势,从而从这些理想产品集中形成参考集的类。此外,对于所有测试产品,我们扫描图像中所有所需的姿势类w.r.t.参考集姿势,确定缺失的姿势并按照潜在影响的顺序对它们进行排序。这些缺失的姿势可以进一步被卖家用来添加丰富的产品清单图像。我们从流行的在线商店收集数据,并手动调查了约200种产品,其中很大一部分至少有1个重复图像或缺失变体,并抽样了3K种产品(约20K图像),其中很大一部分与具有两倍以上图像变体的高评级产品相比,具有添加许多图像变体的范围,这表明我们的模型可以大规模使用。
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