Vision-based Price Suggestion for Online Second-hand Items
This system helps sellers on online second-hand platforms set effective prices for their listings, addressing a common challenge in e-commerce for second-hand goods.
This paper introduces a vision-based price suggestion system for online second-hand items. It uses visual features from product images, augmented with category and brand information, along with statistical item features to determine if an image is suitable for price suggestion via a binary classifier and then provides a price suggestion using a regression model. The system was evaluated on a large real-world dataset, demonstrating its effectiveness.
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.