Fine-Grained Product Classification on Leaflet Advertisements

Authors

  • Daniel Ladwig Offenburg University
  • Bianca Lamm Offenburg University ; Markant Services International GmbH
  • Janis Keuper Offenburg University

DOI:

https://doi.org/10.60643/urai.v2023p144

Keywords:

retail, fine-grained, leaflets, products, image classification, text extraction

Abstract

In this paper, we describe a first publicly available fine-grained product recognition dataset based on leaflet images. Using advertisement leaflets, collected over several years from different European retailers, we provide a total of 41.6k manually annotated product images in 832 classes. Further, we investigate three different approaches for this fine-grained product classification task, Classification by Image, Classification by Text, as well as Classification by Image and Text. The last both approaches use the text extracted directly from the leaflet product images. We show, that the combination of image and text as input improves the classification of visual difficult to distinguish products. The final model leads to an accuracy of 96.4% with a Top-3 score of 99.2%.

https://github.com/ladwigd/Leaflet-Product-Classification

Downloads

Published

13.05.2025