Abstract
A trademark’s image is usually the first type of indirect contact between a consumer and a product or a service. Companies rely on graphical trademarks as a symbol of quality and instant recognition, seeking to protect them from copyright infringements. A popular defense mechanism is graphical searching, where an image is compared to a large database to find potential conflicts with similar trademarks. Despite not being a new subject, image retrieval state-of-the-art lacks reliable solutions in the Industrial Property (IP) sector, where datasets are practically unrestricted in content, with abstract images for which modeling human perception is a challenging task. Existing Content-based Image Retrieval (CBIR) systems still present several problems, particularly in terms of efficiency and reliability. In this paper, we propose a new CBIR system that overcomes these major limitations. It follows a modular methodology, composed of a set of individual components tasked with the retrieval, maintenance and gradual optimization of trademark image searching, working on large-scale, unlabeled datasets. Its generalization capacity is achieved using multiple feature descriptions, weighted separately, and combined to represent a single similarity score. Images are evaluated for general features, edge maps, and regions of interest, using a method based on Watershedding K-Means segments. We propose an image recovery process that relies on a new similarity measure between all feature descriptions. New trademark images are added every day to ensure up-to-date results. The proposed system showcases a timely retrieval speed, with 95% of searches having a 10 second presentation speed and a mean average precision of 93.7%, supporting its applicability to real-word IP protection scenarios.
Funder
Programa Operacional Regional do Centro
Publisher
Public Library of Science (PLoS)
Reference118 articles.
1. Introduction to Information Retrieval
2. Query by image and video content: The QBIC system;M Flickner;Computer,1995
3. Content-based image retrieval at the end of the early years;AW Smeulders;IEEE Transactions on Pattern Analysis and Machine Intelligence,2000
4. Weinzaepfel P, Lucas T, Larlus D, Kalantidis Y. Learning Super-Features for Image Retrieval. In: Proceedings of the 10th International Conference on Learning Representations; 2022. p. 1–19.
5. Inoue M. On the need for annotation-based image retrieval. In: Proceedings of the ACM SIGIR 2004 Workshop on Information Retrieval in Context; 2004. p. 44–46.