Abstract
This paper describes a comparison between three pre-trained neural networks for the classification of chest X-ray images: Xception, Inception V3, and NasNetLarge. Networks were implemented using learning transfer; The database used was the chest x-ray data set, which contains a total of 5856 chest x-ray images of pediatric patients aged one to five years, with three classes: Normal Viral Pneumonia and Bacterial Pneumonia. Data were divided into three groups: validation, testing and training. A comparison was made with the work of kermany who implemented the Inception V3 network in two ways: (Pneumonia X Normal) and (Bacterial Pneumonia X Viral Pneumonia). The nets used had good accuracy, being the NasNetLarge network the best precision, which was 95.35 \% (Pneumonia X Normal) and 91.79 \% (Viral Pneumonia X Bacterial Pneumonia) against 92.80 \% in (Pneumonia X Normal) and 90.70 \% (Viral Pneumonia X Bacterial Pneumonia) from kermany's work, the Xception network also achieved an improvement in accuracy compared to kermany's work, with 93.59 \% at (Normal X Pneumonia) and 91.03 \% in (Viral Pneumonia X Bacterial Pneumonia).
Cite
CITATION STYLE
Costa, N. J. C. da, Moura Sousa, J. V., Santos, D. B. S., Fontenele Marques Junior, F. das C., & Teixeira de Melo, R. (2020). Classification of x-ray images for detection of childhood pneumonia using pre-trained neural networks. Revista Brasileira de Computação Aplicada, 12(3), 132–141. https://doi.org/10.5335/rbca.v12i3.10343
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.