--- dataset_info: features: - name: image dtype: image - name: text dtype: string splits: - name: train num_bytes: 1759539306 num_examples: 2160000 download_size: 1866820804 dataset_size: 1759539306 configs: - config_name: default data_files: - split: train path: data/train-* language: - ar --- # Arabic OCR Dataset ## Overview The Arabic OCR Dataset is a comprehensive resource aimed at enhancing Optical Character Recognition (OCR) capabilities for the Arabic language. The dataset consists of over 2 million labeled images of Arabic text extracted from diverse sources, ideal for training and benchmarking Arabic OCR models. ## Dataset Details - **Dataset Size**: ~2.16 million labeled samples - **Total File Size**: 1.87 GB - **Format**: Parquet - **Modalities**: Images and Text - **Languages**: Arabic ## Structure Each entry in the dataset includes: - `image`: An image file containing Arabic text. - `text`: Corresponding Arabic text as ground truth. The images vary in width from 29px to 222px, containing text samples ranging from 7 to 10 characters in length. ## Intended Uses This dataset is designed for: - Training state-of-the-art Arabic OCR models. - Evaluating performance of OCR systems. - Research in Arabic Natural Language Processing (NLP). ## Limitations - Text length is limited to short to medium-length Arabic text snippets. - Variability in image quality may affect OCR performance. ## How to Use ### Loading the Dataset ```python from datasets import load_dataset # Load Arabic OCR Dataset dataset = load_dataset("mssqapi/Arabic-OCR-Dataset") ``` ### Accessing Data Samples ```python # Example of accessing data sample sample = dataset['train'][0] print(sample['text']) display(sample['image']) ```