ESCUELA DE DOCTORADO
Actividades formativas de doctorado
 
D441004Key Information Extraction in Purchase Documents using Deep Learning and Rule-based Corrections

Inscripción en: https://gestion-doctorado.uah.es/doccursos
(en este momento no hay plazo abierto para preinscripción en este curso)

Coordinación:
D. LUIS MIGUEL BERGASA PASCUAL
D. JESÚS UREÑA UREÑA
Plazas ofertadas: 30
Duración: 2 horas     Tipo: Específico
Modalidad: Presencial

Lugar de impartición: Sala 1 Dpto. Electrónica


Fechas de impartición
23 de febrero de 2023, 15:00 a 16:00h


Descripción general

Deep Learning (DL) is dominating the fields of Natural Language Processing (NLP) and Computer Vision (CV) in the recent times. However, DL commonly relies on the availability of large data annotations, so other alternative or complementary pattern-based techniques can help to improve results. In this paper, we build upon Key Information Extraction (KIE) in purchase documents using both DL and rule-based corrections. Our system initially trusts on Optical Character Recognition (OCR) and text understanding based on entity tagging to identify purchase facts of interest (e.g., product codes, descriptions, quantities, or prices). These facts are then linked to a same product group, which is recognized by means of line detection and some grouping heuristics. Once these DL approaches are processed, we contribute several mechanisms consisting of rule-based corrections for improving the baseline DL predictions. We prove the enhancements provided by these rule-based corrections over the baseline DL results in the presented experiments for purchase documents from public and NielsenIQ datasets