Event detection (ED) is a crucial task for natural language processing (NLP) and it involves the identification of instances of speci ed types of events in text and their classi cation into event types. The detection of events from digitised documents could enable historians to gather and combine a large amount of information into an integrated whole, a panoramic interpretation of the past. However, the level of degradation of digitised documents and the quality of the optical character recognition (OCR) tools might hinder the performance of an event detection system. While several studies have been performed in detecting events from historical documents, the transcribed documents needed to be hand-validated which implied a great effort of ...
International audienceThe French National Library (BnF ) has launched many mass digitization project...
Commercial OCR packages work best with highquality scanned images. They often produce poor results w...
As an effort to improve accessibility to historical documents, digitization of historical archives h...
This paper tackles the epidemiological event extraction task applied to digitized documents. Event e...
This paper tackles the epidemiological event extraction task applied to digitized documents. Event e...
Historical documents pose a challenge for character recognition due to various reasons such as font ...
Mass digitization of historical documents is a challenging problem for optical character recognition...
htmlabstractHumanities scholars increasingly rely on digital archives for their research in place of...
This work focuses on the assessment of characters recognition results produced automatically by opti...
The dataset consists of a multilingual noisy corpora for named entity recognition (NER). The noisy v...
Humanities scholars increasingly rely on digital archives for their research instead of time-consumi...
The user expectation from a digitized collection is that a full text search can be performed and tha...
This paper tackles the task of named entity recognition (NER) applied to digitized historical texts ...
This paper tackles the task of named entity recognition (NER) applied to digitized historical texts ...
In recent years, event processing has become an active area of research in the Natural Language Proc...
International audienceThe French National Library (BnF ) has launched many mass digitization project...
Commercial OCR packages work best with highquality scanned images. They often produce poor results w...
As an effort to improve accessibility to historical documents, digitization of historical archives h...
This paper tackles the epidemiological event extraction task applied to digitized documents. Event e...
This paper tackles the epidemiological event extraction task applied to digitized documents. Event e...
Historical documents pose a challenge for character recognition due to various reasons such as font ...
Mass digitization of historical documents is a challenging problem for optical character recognition...
htmlabstractHumanities scholars increasingly rely on digital archives for their research in place of...
This work focuses on the assessment of characters recognition results produced automatically by opti...
The dataset consists of a multilingual noisy corpora for named entity recognition (NER). The noisy v...
Humanities scholars increasingly rely on digital archives for their research instead of time-consumi...
The user expectation from a digitized collection is that a full text search can be performed and tha...
This paper tackles the task of named entity recognition (NER) applied to digitized historical texts ...
This paper tackles the task of named entity recognition (NER) applied to digitized historical texts ...
In recent years, event processing has become an active area of research in the Natural Language Proc...
International audienceThe French National Library (BnF ) has launched many mass digitization project...
Commercial OCR packages work best with highquality scanned images. They often produce poor results w...
As an effort to improve accessibility to historical documents, digitization of historical archives h...