Tags:Deep Learning, Detecção de Objetos, Malária, Microscopia Automatizada e Inteligente and Visão Computacional
Abstract:
This study presents experimental results on the use of YOLO-based Regional Convolutional Neural Networks for the detection of malaria-causing protozoa in microscopic images. The analysis of the experimental results highlighted YOLOv7 X as the benchmark solution, achieving an F-Score of 80.24%, which validates the proposed strategy on a realistic dataset and contributes to the development of Automated and Intelligent Microscopy.
Automated and Intelligent Microscopy with Deep Learning for Malaria Detection