Datasets:
Tasks:
Image Classification
Modalities:
Image
Formats:
imagefolder
Languages:
English
Size:
100K - 1M
Tags:
OCR
Handwriting
Character Recognition
Grayscale Images
ASCII Labels
Optical Character Recognition
License:
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Each dataset instance contains an image of a handwritten character or numeral, paired with its corresponding ASCII label.
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### Data Organization
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The dataset
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## Dataset Utility
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The AlphaNum dataset caters to a variety of use cases including text recognition, document processing, and machine learning tasks. It is particularly instrumental in the development, fine-tuning, and enhancement of OCR models.
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Each dataset instance contains an image of a handwritten character or numeral, paired with its corresponding ASCII label.
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### Data Organization
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The dataset is organized into three separate .zip files: `train.zip`, `test.zip`, and `validation.zip`. Each ASCII symbol is housed in a dedicated folder, the name of which corresponds to the ASCII value of the symbol.
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- `train.zip` size: 55.9 MB
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- `test.zip` size: 16 MB
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- `validation.zip` size: 8.06 MB
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## Dataset Utility
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The AlphaNum dataset caters to a variety of use cases including text recognition, document processing, and machine learning tasks. It is particularly instrumental in the development, fine-tuning, and enhancement of OCR models.
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