论文标题
基于视觉的在线二手项目的价格建议
Vision-based Price Suggestion for Online Second-hand Items
论文作者
论文摘要
不同于在物理商店购物,那里的人们有机会在做出购买决定之前密切检查产品(例如,触摸T恤的表面或闻到香水的气味),在线购物者在线购物者非常依赖上载的产品图像来做出任何购买决定。在网上销售或购买二手商品时,决策是具有挑战性的,因为估计物品的价格并不微不足道。在这项工作中,我们为在线二手商品购物平台提供了基于视觉的价格建议系统。基于视觉的价格建议的目的是帮助卖家将其二手列表的有效价格设置为将图像上传到在线平台。 首先,我们建议借助其他基于图像的项目信息(例如类别,品牌)从图像中更好地从图像中提取代表性的视觉特征。然后,我们设计一个基于视觉的价格建议模块,该模块将提取的视觉特征以及购物平台中的一些统计项目作为输入,以确定上传的项目图像是否有资格通过二进制分类模型来提高价格建议,并通过A回归模型提供具有合格图像的项目的价格建议。根据平台的两个要求,提出了两个不同的目标函数,以共同优化分类模型和回归模型。对于更好的模型培训,我们还为联合优化提出了热身培训策略。在大型现实世界数据集上进行的广泛实验证明了我们基于视觉的价格预测系统的有效性。
Different from shopping in physical stores, where people have the opportunity to closely check a product (e.g., touching the surface of a T-shirt or smelling the scent of perfume) before making a purchase decision, online shoppers rely greatly on the uploaded product images to make any purchase decision. The decision-making is challenging when selling or purchasing second-hand items online since estimating the items' prices is not trivial. In this work, we present a vision-based price suggestion system for the online second-hand item shopping platform. The goal of vision-based price suggestion is to help sellers set effective prices for their second-hand listings with the images uploaded to the online platforms. First, we propose to better extract representative visual features from the images with the aid of some other image-based item information (e.g., category, brand). Then, we design a vision-based price suggestion module which takes the extracted visual features along with some statistical item features from the shopping platform as the inputs to determine whether an uploaded item image is qualified for price suggestion by a binary classification model, and provide price suggestions for items with qualified images by a regression model. According to two demands from the platform, two different objective functions are proposed to jointly optimize the classification model and the regression model. For better model training, we also propose a warm-up training strategy for the joint optimization. Extensive experiments on a large real-world dataset demonstrate the effectiveness of our vision-based price prediction system.