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.
翻译:在电子商务网站的产品细节页面上,产品图像是客户互动最令人印象深刻的媒介。 数百万产品每天被放到网络储存目录中,并且保持产品图像集的高质量栏是一个规模上的问题。 将产品按类别分类,服装是一个非常高的数量和高速的类别,因此值得自己注意。 鉴于对图像集完整性的监测具有挑战性, 它为消费者充分详细描述产品, 而这反过来往往导致客户经验差, 客户下降。 为了监督这些产品类型产品产品页面中图像的质量和完整性, 并提出改进建议, 我们建议使用一种基于不受监督的方法, 扫描缺失产品的图像集。 将产品按类别分类分类, 服装是一个非常高的数量和高速的类别分类, 因而值得注意。 我们首先用完整图像集成一个受欢迎的产品集集, 然后将最受欢迎的图像组合组成这些理想产品集成的参考类别。 此外, 我们用大量图像扫描的图像集成一个巨大的范围, 将显示所有图像集成比例, 将显示我们所缺少的图表集成的图表集成的样本, 将进一步显示我们所缺少的图表集成的图表集成的图段。 。 将显示的图集中的图集中的图集中, 将进一步显示我们所缺少的图集中的图集中的图集中的图集中的图集, 。 将显示的图集中的图集中的图集中的图集中的图集将显示的图集中的图集中的图集, 。