Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: Efficient detection and classification of blood cells are vital for accurate
diagnosis and effective treatment of blood disorders. This study utilizes a
YOLOv10 model trained on Roboflow data with images resized to 640x640 pixels
across varying epochs. The results show that increased training epochs
significantly enhance accuracy, precision, and recall, particularly in
real-time blood cell detection & classification. The YOLOv10 model outperforms
MobileNetV2, ShuffleNetV2, and DarkNet in real-time performance, though
MobileNetV2 and ShuffleNetV2 are more computationally efficient, and DarkNet
excels in feature extraction for blood cell classification. This research
highlights the potential of integrating deep learning models like YOLOv10,
MobileNetV2, ShuffleNetV2, and DarkNet into clinical workflows, promising
improvements in diagnostic accuracy and efficiency. Additionally, a new,
well-annotated blood cell dataset was created and will be open-sourced to
support further advancements in automatic blood cell detection and
classification. The findings demonstrate the transformative impact of these
models in revolutionizing medical diagnostics and enhancing blood disorder
management