2024
DOI: 10.1007/s10032-024-00477-8
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Neural models for semantic analysis of handwritten document images

Oliver Tüselmann,
Gernot A. Fink

Abstract: Semantic analysis of handwritten document images offers a wide range of practical application scenarios. A sequential combination of handwritten text recognition (HTR) and a task-specific natural language processing system offers an intuitive solution in this domain. However, this HTR-based approach suffers from the problem of error propagation. An HTR-free model, which avoids explicit text recognition and solves the task end-to-end, tackles this problem, but often produces poor results. A possible reason for … Show more

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