Extract MNIST handwritten digits dataset binary file into bmp images

Overview

MNIST-dataset-extractor

Extract MNIST handwritten digits dataset binary file into bmp images

More info at http://yann.lecun.com/exdb/mnist/

Dependencies

  • numpy
  • opencv

To install them in conda environment

conda env update --file requirements.yml

usage

python3 main.py filename output_folder

arguments:
  filename       File name to extract
  output_folder  Folder to extract files in

Download

Already extracted images can be downloaded at releases

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Owner
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