Embedded System‐Based Malaria Detection From Blood Smear Images Using Lightweight Deep Learning Model
Abdus Salam,
S. M. Nahid Hasan,
Md. Jawadul Karim
et al.
Abstract:The disease of malaria, transmitted by female Anopheles mosquitoes, is highly contagious, resulting in numerous deaths across various regions. Microscopic examination of blood cells remains one of the most accurate methods for malaria diagnosis, but it is time‐consuming and can produce inaccurate results occasionally. Due to machine learning and deep learning advances in medical diagnosis, improved diagnostic accuracy can now be achieved while costs can be reduced compared to conventional microscopy methods. T… Show more
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