IdenProf - IdenProf dataset is a collection of images of identifiable professionals

  •        69

IdenProf is a dataset containing images of identifiable professionals. There are 1,100 images for each category, with 900 images for trainings and 200 images for testing . We are working on adding more categories in the future and will continue to improve the dataset.

https://aicommons.science
https://github.com/OlafenwaMoses/IdenProf

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