NeuroPapyri: A Deep Attention Embedding Network for Handwritten Papyri Retrieval
Giuseppe De Gregorio, Simon Perrin, Rodrigo C. G. Pena, Isabelle, Marthot-Santaniello, Harold Mouch\`ere

TL;DR
NeuroPapyri is a deep learning model with an attention mechanism designed for handwritten papyri retrieval, improving interpretability and performance in analyzing ancient Greek manuscripts.
Contribution
Introduces NeuroPapyri, a novel deep attention network that enhances interpretability and accuracy in historical manuscript image analysis.
Findings
Effective retrieval of handwritten papyri images
Attention maps provide interpretability of model decisions
Demonstrates potential for advancing historical manuscript analysis
Abstract
The intersection of computer vision and machine learning has emerged as a promising avenue for advancing historical research, facilitating a more profound exploration of our past. However, the application of machine learning approaches in historical palaeography is often met with criticism due to their perceived ``black box'' nature. In response to this challenge, we introduce NeuroPapyri, an innovative deep learning-based model specifically designed for the analysis of images containing ancient Greek papyri. To address concerns related to transparency and interpretability, the model incorporates an attention mechanism. This attention mechanism not only enhances the model's performance but also provides a visual representation of the image regions that significantly contribute to the decision-making process. Specifically calibrated for processing images of papyrus documents with lines…
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Taxonomy
TopicsHandwritten Text Recognition Techniques · Natural Language Processing Techniques
MethodsSoftmax · Attention Is All You Need
