Vision-based Price Suggestion for Online Second-hand Items
Liang Han, Zhaozheng Yin, Zhurong Xia, Li Guo, Mingqian Tang, Rong Jin

TL;DR
This paper introduces a vision-based system that uses product images and additional item information to suggest prices for second-hand items online, aiding sellers in setting effective prices.
Contribution
It presents a novel joint classification and regression framework with a warm-up training strategy for price suggestion based on visual and statistical features.
Findings
Effective price prediction demonstrated on a large real-world dataset.
Joint optimization improves price suggestion accuracy.
Visual feature extraction enhances model performance.
Abstract
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…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Visual Attention and Saliency Detection · Image and Video Quality Assessment
