Image-Text Pre-Training for Logo Recognition
Abstract
Open-set logo recognition is commonly solved by first detecting possible logo regions and then matching the detected parts against an ever-evolving dataset of cropped logo images. The matching model, a metric learning problem, is especially challenging for logo recognition due to the mixture of text and symbols in logos. We propose two novel contributions to improve the matching model's performance: (a) using image-text paired samples for pre-training, and (b) an improved metric learning loss function. A standard paradigm of fine-tuning ImageNet pre-trained models fails to discover the text sensitivity necessary to solve the matching problem effectively. This work demonstrates the importance of pre-training on image-text pairs, which significantly improves the performance of a visual embedder trained for the logo retrieval task, especially for more text-dominant classes. We construct a composite public logo dataset combining LogoDet3K, OpenLogo, and FlickrLogos-47 deemed OpenLogoDet3K47. We show that the same vision backbone pre-trained on image-text data, when fine-tuned on OpenLogoDet3K47, achieves recall@1, significantly improving performance over pre-training on Imagenet1K (). We generalize the ProxyNCA++ loss function to propose ProxyNCAHN++ which incorporates class-specific hard negative images. The proposed method sets new state-of-the-art on five public logo datasets considered, with a zero-shot recall@1 improvement on LogoDet3K test, on OpenLogo, on FlickrLogos-47, on Logos In The Wild, and on BelgaLogo.
Cite
@article{arxiv.2309.10206,
title = {Image-Text Pre-Training for Logo Recognition},
author = {Mark Hubenthal and Suren Kumar},
journal= {arXiv preprint arXiv:2309.10206},
year = {2023}
}
Comments
8 pages, 5 figures, 4 tables