--- license: gpl-3.0 base_model: - naver-clova-ix/donut-base pipeline_tag: visual-document-retrieval --- # HeR-T: Herbarium specimen label Recognition Transformer ## πŸ“ƒ Paper Application of computer vision to the automated extraction of metadata from natural history specimen labels: A case study on herbarium specimens (Under Review) ## πŸ’ Authors Zacchigna, Jacopo; Liu, Weiwei; Pellegrino, Felice Andrea; Peron, Adriano; Roma-Marzio, Francesco; Peruzzi, Lorenzo; Martellos, Stefano ## πŸš€ Overview HeR-T (Herbarium specimen label Recognition Transformer) is a fine-tuned vision-language model designed for automated metadata extraction of history specimen labels, especially herbarium specimen labels. It leverages Donut-base and has been fine-tuned with 55,089 herbarium specimen images from the Herbarium of the University of Pisa (international acronym PI). ## πŸ”₯ Features - **Fine-tuned on** specimen images from the Herbarium of the University of Pisa for automated metadata extraction of history specimen labels - **Supports** image inputs with labels containing printed, handwritten, or mixed-format texts - **Evaluation**: Tree Edit Distance (TED) accuracy score with the formula max(0, 1βˆ’TED(pr, gt)/TED(Ο†, gt)), where gt, pr, and Ο† stand for ground truth, prediction, and empty trees respectively - **Pre-trained weights** are loaded from Donut-base (naver-clova-ix/donut-base)