BloodCell-Net: A lightweight convolutional neural network for the classification of all microscopic blood cell images of the human body
Sohag Kumar Mondal, Md. Simul Hasan Talukder, Mohammad Aljaidi, Rejwan, Bin Sulaiman, Md Mohiuddin Sarker Tushar, Amjad A Alsuwaylimi

TL;DR
BloodCell-Net is a lightweight deep learning system that automates blood cell classification and counting from microscopic images, improving accuracy and efficiency in diagnosing blood diseases.
Contribution
The paper introduces a novel lightweight CNN architecture for blood cell classification, combined with segmentation and separation techniques, achieving high accuracy and efficiency.
Findings
Segmentation model achieved 98.23% accuracy and 97.92% Dice coefficient.
The classifier achieved 97.10% accuracy and 97.19% precision.
The system effectively separates and classifies nine blood cell types.
Abstract
Blood cell classification and counting are vital for the diagnosis of various blood-related diseases, such as anemia, leukemia, and thrombocytopenia. The manual process of blood cell classification and counting is time-consuming, prone to errors, and labor-intensive. Therefore, we have proposed a DL based automated system for blood cell classification and counting from microscopic blood smear images. We classify total of nine types of blood cells, including Erythrocyte, Erythroblast, Neutrophil, Basophil, Eosinophil, Lymphocyte, Monocyte, Immature Granulocytes, and Platelet. Several preprocessing steps like image resizing, rescaling, contrast enhancement and augmentation are utilized. To segment the blood cells from the entire microscopic images, we employed the U-Net model. This segmentation technique aids in extracting the region of interest (ROI) by removing complex and noisy…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · Cell Image Analysis Techniques · AI in cancer detection
