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metadata
license: mit
task_categories:
  - object-detection
  - text-classification
  - zero-shot-classification
language:
  - en
  - ar
size_categories:
  - 10K<n<100K

CORU: Comprehensive Post-OCR Parsing and Receipt Understanding Dataset

In the fields of Optical Character Recognition (OCR) and Natural Language Processing (NLP), integrating multilingual capabilities remains a critical challenge, especially when considering languages with complex scripts such as Arabic. This paper introduces the Comprehensive Post-OCR Parsing and Receipt Understanding Dataset (CORU), a novel dataset specifically designed to enhance OCR and information extraction from receipts in multilingual contexts involving Arabic and English. CORU consists of over 20,000 annotated receipts from diverse retail settings in Egypt, including supermarkets and clothing stores, alongside 30,000 annotated images for OCR that were utilized to recognize each detected line, and 10,000 items annotated for detailed information extraction. These annotations capture essential details such as merchant names, item descriptions, total prices, receipt numbers, and dates. They are structured to support three primary computational tasks: object detection, OCR, and information extraction. We establish the baseline performance for a range of models on CORU to evaluate the effectiveness of traditional methods, like Tesseract OCR, and more advanced neural network-based approaches. These baselines are crucial for processing the complex and noisy document layouts typical of real-world receipts and for advancing the state of automated multilingual document processing.

Dataset Overview

CORU is divided into Three challenges:

  • Key Information Detection.
  • Large-Scale OCR Dataset
  • Item Information Extraction

Dataset Statistics

Category Training Validation Test
Object Detection 12,600 3700 3700
OCR 21,000 4,500 4,500
IE 7000 1500 1500

Sample Images from the Dataset

Here are five examples from the dataset, showcasing the variety of receipts included:

Sample Image 1 Sample Image 2 Sample Image 3

Download Links

Key Information Detection

OCR Dataset

Item Information Extraction

Citation

If you find these codes or data useful, please consider citing our paper as:

@misc{abdallah2024coru,
    title={CORU: Comprehensive Post-OCR Parsing and Receipt Understanding Dataset},
    author={Abdelrahman Abdallah and Mahmoud Abdalla and Mahmoud SalahEldin Kasem and Mohamed Mahmoud and Ibrahim Abdelhalim and Mohamed Elkasaby and Yasser ElBendary and Adam Jatowt},
    year={2024},
    eprint={2406.04493},
    archivePrefix={arXiv},
    primaryClass={cs.CV}
}