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# Entry 97986 - TD2_VISA | |
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in Data Studio
Khmer English OCR image line Dataset π
A large-scale synthetic dataset for training OCR models on Khmer and English text. This dataset contains 12 million high-quality synthetic images of text lines.
π― Dataset Overview
- Total Images: 12,138,214
- Languages: Khmer, English, and mixed
- Format: Image-text pairs
- Use Case: OCR model training
π Data Fields
- image: PIL Image of the text line
- text: Ground truth text string
πΎ Usage
Load with Hugging Face
from datasets import load_dataset
dataset = load_dataset("mrrtmob/km_en_image_line")
# Access an example
example = dataset['train'][0]
image = example['image'] # PIL Image
text = example['text'] # str
Train with Kiri OCR
kiri-ocr train \
--hf-dataset mrrtmob/km_en_image_line \
--epochs 50 \
--batch-size 32
π¨ Dataset Features
- Multiple Khmer and English fonts
- Realistic augmentations (noise, blur, rotation)
- Variable text lengths (5-100 characters)
π Citation
@dataset{khmer_english_ocr_image_line,
author = {mrrtmob},
title = {Khmer English OCR image line Dataset},
year = {2026},
publisher = {Blizzer},
howpublished = {\url{https://huggingface.co/datasets/mrrtmob/khmer_english_ocr_image_line}}
}
βοΈ License
CC BY 4.0
π Related
- Kiri OCR Library: github.com/mrrtmob/kiri-ocr
β Support
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