A Shallow Learning Investigation for COVID-19 Classification

Zedda L.;Loddo A.;Di Ruberto C.
2022-01-01

Abstract

COVID-19, an infectious coronavirus disease, triggered a pandemic that resulted in countless deaths. Since its inception, clinical institutions have used computed tomography as a supplemental screening method to reverse transcription-polymerase chain reaction. Deep learning approaches have shown promising results in addressing the problem; however, less computationally expensive techniques, such as those based on handcrafted descriptors and shallow classifiers, may be equally capable of detecting COVID-19 based on medical images of patients. This work proposes an initial investigation of several handcrafted descriptors well known in the computer vision literature already been exploited for similar tasks. The goal is to discriminate tomographic images belonging to three classes, COVID-19, pneumonia, and normal conditions, and present in a large public dataset. The results show that kNN and ensembles trained with texture descriptors achieve outstanding accuracy in this task, reaching accuracy and F-measure of 93.05% and 89.63%, respectively. Although it did not exceed state of the art, it achieved satisfactory performance with only 36 features, enabling the potential to achieve remarkable improvements from a computational complexity perspective.
2022
Inglese
Image Analysis and Processing. ICIAP 2022 Workshops. ICIAP International Workshops, Lecce, Italy, May 23–27, 2022, Revised Selected Papers, Part I
978-3-031-13320-6
978-3-031-13321-3
Springer
Cham
Alicia Montoro-Lendínez, et al.
Pier Luigi Mazzeo, Emanuele Frontoni, Stan Sclaroff, Cosimo Distante
13373
326
337
12
21st International Conference on Image Analysis and Processing , ICIAP 2022
Contributo
Esperti anonimi
23-27 May 2022
Lecce, Italy
internazionale
scientifica
Computer vision; COVID-19 detection; CT scan images; Image processing; Shallow learning; Texture features
no
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Zedda, L.; Loddo, A.; Di Ruberto, C.
273
3
4.1 Contributo in Atti di convegno
open
info:eu-repo/semantics/conferencePaper
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