Comparative Study of Lung Image Representations for Automated Pneumonia Recognition

Authors

  • Angel Ernesto Picazo Castillo Instituto Nacional de Astrofísica, Óptica y Electrónica
  • Salvador E. Ayala Raggi Benemérita Universidad Autónoma de Puebla
  • Leopoldo Altamirano Robles Instituto Nacional de Astrofísica, Óptica y Electrónica
  • Aldrin Barreto Flores Benemérita Universidad Autónoma de Puebla
  • José Francisco Portillo Robledo Benemérita Universidad Autónoma de Puebla

DOI:

https://doi.org/10.61467/2007.1558.2024.v15i5.578

Keywords:

Pneumonia, CNNs, Fisher´s Ratio

Abstract

This paper presents a method for automatic pneumonia recognition by localizing and normalizing the position, rotation, and scale of lung regions in chest X-ray images. Likewise, we propose a classifier composed by: "Eigenfaces" method for feature reduction, Fisher’s discriminant criterion for feature selection, and a Multilayer Perceptron (MLP). We showed that a proper lung region alignment improves accuracy in several classifiers. Several CNN classifiers (MobileNetV2, ResNet-50, ResNet-18, Compact, and AlexNet), and our feature-discrimination-based classifier were tested with non-aligned images from a semantic segmentation stage, and on the other hand, with aligned images from our proposed normalization stage. Results show that the proposed normalization method improves MobileNetV2's accuracy to 97.1%, compared to 95.3% when using semantic segmentation. Furthermore, our proposed classifier based on feature discrimination increases its accuracy to 97.3% when using the normalization stage. Our classifier and normalization method achieve comparable or superior results to CNN classifiers.

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Published

2024-11-29

How to Cite

Picazo Castillo, A. E., Ayala Raggi, S. E., Altamirano Robles, L., Barreto Flores, A., & Portillo Robledo, J. F. (2024). Comparative Study of Lung Image Representations for Automated Pneumonia Recognition. International Journal of Combinatorial Optimization Problems and Informatics, 15(5), 193–201. https://doi.org/10.61467/2007.1558.2024.v15i5.578

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