--- dataset_info: features: - name: File dtype: string - name: Date dtype: int64 - name: OCR_toInput dtype: string - name: OCR_aligned dtype: string - name: GS_aligned dtype: string - name: Ground_truth_aligned dtype: string - name: Ground_truth dtype: string - name: distance dtype: int64 - name: cer dtype: float64 - name: wer dtype: float64 splits: - name: train num_bytes: 11573638 num_examples: 765 - name: dev num_bytes: 1056634 num_examples: 95 - name: test num_bytes: 1782846 num_examples: 97 download_size: 9457542 dataset_size: 14413118 configs: - config_name: default data_files: - split: train path: data/train-* - split: dev path: data/dev-* - split: test path: data/test-* task_categories: - image-to-text language: - fr tags: - OCR - NLP - TAL pretty_name: Split ICDAR2017 dataset --- This dataset is a filtered version of the *ICDAR2017* Competition on Handwritten Text Recognition, focusing on monograph texts written between 1800 and 1900. It consists of a total of **957 documents**, divided into training, validation, and testing sets, and is designed for post-correction of OCR (Optical Character Recognition) text. - **Total Documents**: 957 - **Training Set**: 765 - **Validation Set**: 95 - **Test Set**: 97 ## Purpose The dataset aims to improve the accuracy of digitized texts by providing a reliable Ground Truth for comparison and correction, specifically addressing the challenges of French text of 19th century. ## Structure The dataset is organized as follows: ```plaintext dataset/ ├── train/ │ ├── file1.txt │ ├── file2.txt │ └── ... ├── dev/ │ ├── file1.txt │ ├── file2.txt │ └── ... ├── test/ │ ├── file1.txt │ ├── file2.txt │ └── ... └── metadata.csv # This file contains metadata for each txt file ``` - **Content** [#.txt] - **1st line**: "[OCR_toInput] " => Raw OCRed text to be denoised. - **2nd line**: "[OCR_aligned] " => Aligned OCRed text. - **3rd line**: "[GS_aligned] " => Aligned Gold Standard. The alignment was made at the character level using "@" symbols. "#" symbols correspond to the absence of GS either related to alignment uncertainities or related to unreadable characters in the source document. For a better view of the alignment, make sure to disable the "word wrap" option in your text editor. ## Author Information Prepared by **Mikhail Biriuchinskii**, an engineer in Natural Language Processing at Sorbonne University. ## Original Dataset Reference For more information, visit the original dataset source: [ICDAR2017 Competition on Post-OCR Text Correction](http://l3i.univ-larochelle.fr/ICDAR2017PostOCR). ## Copyright The original corpus is publicly accessible, and I do not hold any rights to this deployment of the corpus.