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Marginalia and machine learning: Handwritten text recognition for Marginalia Collections

The pressing need for digitization of historical document collections has led to a strong interest in designing computerised image processing methods for automatic hand-written text recognition (HTR). Handwritten text possesses high variability due to different writing styles, languages and scripts. Training an accurate and robust HTR system calls for data-efficient approaches due to the unavailability of sufficient amounts of annotated multi-writer text. A case study on an ongoing project “Marginalia and Machine Learning” is presented here that focuses on automatic detection and recognition of handwritten marginalia texts i.e., text written in margins or handwritten notes. Faster R-CNN network is used for detection of marginalia and AttentionHTR is used for word recognition. The data comes from early book collections (printed) found in the Uppsala University Library, with handwritten marginalia texts. Source code and pretrained models are available at https://github.com/ektavats/Project-Marginalia.

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The SSH Open Marketplace is maintained and will be further developed by three European Research Infrastructures - DARIAH, CLARIN and CESSDA - and their national partners. It was developed as part of the "Social Sciences and Humanities Open Cloud" SSHOC project, European Union's Horizon 2020 project call H2020-INFRAEOSC-04-2018, grant agreement #823782.

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