Reading order detection on handwritten documents

Reconocimiento (by)

Fecha

Directores

Editores

Otras autorías

Unidades organizativas

Compartir

Handle

https://riunet.upv.es/handle/10251/199583

Cita bibliográfica

Quirós, L.;Vidal, Enrique (2022). Reading order detection on handwritten documents. Neural Computing and Applications. 34(12):9593-9611. https://doi.org/10.1007/s00521-022-06948-5

Titulación

Resumen

[EN] Recent advances in Handwritten Text Recognition and Document Layout Analysis have made it possible to convert digital images of manuscripts into electronic text. However, providing this text with the correct structure and context is still an open problem that needs to be solved to actually enable extracting the relevant information conveyed by the text. The most important structure needed for a set of text elements is their reading order. Most of the studies on the reading order problem are rule-based approaches and focus on printed documents. Much less attention has been paid so far to handwritten text documents, where the problem becomes particularly important-and challenging. In this work, we propose a new approach to automatically determine the reading order of text regions and lines in handwritten text documents. The task is approached as a sorting problem where the order-relation operator is automatically learned from examples. We experimentally demonstrate the effectiveness of our method on three different datasets at different hierarchical levels.

Fuente

Neural Computing and Applications issn: 0941-0643

Enlaces relacionados

URL