Releases: MahmudulAlam/Complete-Blood-Cell-Count-Dataset
CBC Dataset
The complete blood count (CBC)
dataset contains 360 blood smear images along with their annotation files splitting into Training
, Testing
, and Validation
sets. The training folder contains 300 images with annotations. The testing and validation folder both contain 60 images with annotations. We have split the dataset into three parts. Among the 360 smear images, 300 blood cell images with annotations are used as the training set first, and then the rest of the 60 images with annotations are used as the testing set. Due to the shortage of data, a subset of the training set is used to prepare the validation set which contains 60 images with annotations.
Paper
The dataset is modified and prepared for this paper
for automatic identification and counting of blood cells
🔗 If you use this dataset, please cite this paper:
Machine learning approach of automatic identification and counting of blood cells
@article{alam2019machine,
title={Machine learning approach of automatic identification and counting of blood cells},
author={Alam, Mohammad Mahmudul and Islam, Mohammad Tariqul},
journal={Healthcare Technology Letters},
volume={6},
number={4},
pages={103--108},
year={2019},
publisher={IET}
}