Object Detection Pipeline Using YOLOv8 for Document Information Extraction

Date issued

2023

Journal Title

Journal ISSN

Volume Title

Publisher

CEUR-WS

Abstract

The extraction of information from semi-structured documents is an ongoing problem. This task is often approached from the perspective of NLP and large transformer-based models are employed. In our work, we successfully demonstrated that the Key Information Localization and Extraction (KILE) and Line Item Recognition (LIR) tasks can be effectively addressed as object detection problems using a convolutional neural network (CNN) model. We utilized a relatively small and fast YOLOv8 model for which we conducted a series of experiments to explore the impact of different factors on model training. With YOLOv8, we were able to achieve AP 0.716 on the KILE task and 0.638 on the LIR task. Our code is available at https://github.com/strakaj/YOLOv8-for-document-understanding.git.

Description

Subject(s)

Document Understanding, Document Information Extraction, Object Detection, YOLOv8, Line Item Recognition, Key Information Localization and Extraction

Citation