Young Researcher Paper Award 2023
🥇Winners

Notice of retraction
Vol. 34, No. 8(3), S&M3042

Notice of retraction
Vol. 32, No. 8(2), S&M2292

Print: ISSN 0914-4935
Online: ISSN 2435-0869
Sensors and Materials
is an international peer-reviewed open access journal to provide a forum for researchers working in multidisciplinary fields of sensing technology.
Sensors and Materials
is covered by Science Citation Index Expanded (Clarivate Analytics), Scopus (Elsevier), and other databases.

Instructions to authors
English    日本語

Instructions for manuscript preparation
English    日本語

Template
English

Publisher
 MYU K.K.
 Sensors and Materials
 1-23-3-303 Sendagi,
 Bunkyo-ku, Tokyo 113-0022, Japan
 Tel: 81-3-3827-8549
 Fax: 81-3-3827-8547

MYU Research, a scientific publisher, seeks a native English-speaking proofreader with a scientific background. B.Sc. or higher degree is desirable. In-office position; work hours negotiable. Call 03-3827-8549 for further information.


MYU Research

(proofreading and recording)


MYU K.K.
(translation service)


The Art of Writing Scientific Papers

(How to write scientific papers)
(Japanese Only)

Sensors and Materials, Volume 36, Number 2(3) (2024)
Copyright(C) MYU K.K.
pp. 683-699
S&M3555 Research Paper of Special Issue
https://doi.org/10.18494/SAM4685
Published: February 29, 2024

Evaluating Feature Fusion Techniques with Deep Learning Models for Coronavirus Disease 2019 Chest X-ray Sensor Image Identification [PDF]

Chih-Ta Yen, Jia-Xian Liao, and Yi-Kai Huang

(Received July 2, 2023; Accepted January 29, 2024)

Keywords: COVID-19, convolutional neural network, deep learning, chest X-ray (CXR), contrast-limited adaptive histogram equalization (CLAHE), feature fusion

Current diagnostic methods for coronavirus disease 2019 (COVID-19) mainly rely on reverse transcription polymerase chain reaction (RT-PCR). However, RT-PCR is costly and time-consuming. Therefore, an accurate, rapid, and inexpensive screening method must be developed for the diagnosis of COVID-19. In this study, we combined image processing technologies with deep learning algorithms to enhance the accuracy of COVID-19 identification from chest X-ray (CXR) sensor images. Contrast-limited adaptive histogram equalization (CLAHE) was used to improve the visibility level of unclear images. In addition, we examined whether our image fusion technique can effectively improve the performance of seven deep learning models (MobileNetV2, ResNet50, ResNet152V2, Inception-ResNet-v2, DenseNet121, DenseNet201, and Xception). The proposed feature fusion technique involves merging the features of an original image with those of an image subjected to CLAHE and then using the merged features to retrain, test, and validate deep learning models for identifying COVID-19 in CXR images. To avoid incidences of images not matching reality and to ensure high model stability, no data enhancement was conducted. The results of this study indicate that the proposed image fusion technique can improve the classification evaluation indicators, especially the sensitivity of deep learning models in two-class and three-class sortings. Sensitivity refers to a model’s ability to detect an infection correctly. The highest accuracy in this study was achieved when combining Xception with the proposed feature fusion technique. In three-class sorting, the accuracy of this method was 99.74%, with the average accuracy of fivefold cross-validation being 99.19%. In two-class sorting, the accuracy of the aforementioned method was 99.74%, with the average accuracy of fivefold cross-validation being 99.50%. The results showed that the proposed image processing technologies with deep learning algorithms have exceptional generalization.

Corresponding author: Chih-Ta Yen


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.

Cite this article
Chih-Ta Yen, Jia-Xian Liao, and Yi-Kai Huang, Evaluating Feature Fusion Techniques with Deep Learning Models for Coronavirus Disease 2019 Chest X-ray Sensor Image Identification, Sens. Mater., Vol. 36, No. 2, 2024, p. 683-699.



Forthcoming Regular Issues


Forthcoming Special Issues

Applications of Novel Sensors and Related Technologies for Internet of Things
Guest editor, Teen-Hang Meen (National Formosa University), Wenbing Zhao (Cleveland State University), and Cheng-Fu Yang (National University of Kaohsiung)
Call for paper


Special Issue on Advanced Data Sensing and Processing Technologies for Smart Community and Smart Life
Guest editor, Tatsuya Yamazaki (Niigata University)
Call for paper


Special Issue on Advanced Sensing Technologies and Their Applications in Human/Animal Activity Recognition and Behavior Understanding
Guest editor, Kaori Fujinami (Tokyo University of Agriculture and Technology)
Call for paper


Special Issue on International Conference on Biosensors, Bioelectronics, Biomedical Devices, BioMEMS/NEMS and Applications 2023 (Bio4Apps 2023)
Guest editor, Dzung Viet Dao (Griffith University) and Cong Thanh Nguyen (Griffith University)
Conference website
Call for paper


Special Issue on Piezoelectric Thin Films and Piezoelectric MEMS
Guest editor, Isaku Kanno (Kobe University)
Call for paper


Special Issue on Advanced Micro/Nanomaterials for Various Sensor Applications (Selected Papers from ICASI 2023)
Guest editor, Sheng-Joue Young (National United University)
Conference website
Call for paper


Copyright(C) MYU K.K. All Rights Reserved.