Extended forgery detection framework for COVID-19 medical data using convolutional neural network
Medical data tampering has become one of the main challenges in the field of secure-aware medical data processing. Forgery of normal patients' medical data to present them as COVID-19 patients is an illegitimate action that has been carried out in different ways recently. Therefore, the integri...
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my.um.eprints.343452022-06-09T06:53:14Z http://eprints.um.edu.my/34345/ Extended forgery detection framework for COVID-19 medical data using convolutional neural network Gill, Sajid Habib Sheikh, Noor Ahmed Rajpar, Samina ul Abidin, Zain Jhanjhi, N. Z. Ahmad, Muneer Razzaq, Mirza Abdur Alshamrani, Sultan S. Malik, Yasir Jaafar, Fehmi QA75 Electronic computers. Computer science TA Engineering (General). Civil engineering (General) Medical data tampering has become one of the main challenges in the field of secure-aware medical data processing. Forgery of normal patients' medical data to present them as COVID-19 patients is an illegitimate action that has been carried out in different ways recently. Therefore, the integrity of these data can be questionable. Forgery detection is a method of detecting an anomaly in manipulated forged data. An appropriate number of features are needed to identify an anomaly as either forged or non-forged data in order to find distortion or tampering in the original data. Convolutional neural networks (CNNs) have contributed a major breakthrough in this type of detection. There has been much interest from both the clinicians and the AI community in the possibility of widespread usage of artificial neural networks for quick diagnosis using medical data for early COVID-19 patient screening. The purpose of this paper is to detect forgery in COVID-19 medical data by using CNN in the error level analysis (ELA) by verifying the noise pattern in the data. The proposed improved ELA method is evaluated using a type of data splicing forgery and sigmoid and ReLU phenomenon schemes. The proposed method is verified by manipulating COVID-19 data using different types of forgeries and then applying the proposed CNN model to the data to detect the data tampering. The results show that the accuracy of the proposed CNN model on the test COVID-19 data is approximately 92%. Tech Science Press 2021 Article PeerReviewed Gill, Sajid Habib and Sheikh, Noor Ahmed and Rajpar, Samina and ul Abidin, Zain and Jhanjhi, N. Z. and Ahmad, Muneer and Razzaq, Mirza Abdur and Alshamrani, Sultan S. and Malik, Yasir and Jaafar, Fehmi (2021) Extended forgery detection framework for COVID-19 medical data using convolutional neural network. CMC-Computers Materials & Continua, 68 (3). pp. 3773-3787. ISSN 1546-2218, DOI https://doi.org/10.32604/cmc.2021.016001 <https://doi.org/10.32604/cmc.2021.016001>. 10.32604/cmc.2021.016001 |
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QA75 Electronic computers. Computer science TA Engineering (General). Civil engineering (General) Gill, Sajid Habib Sheikh, Noor Ahmed Rajpar, Samina ul Abidin, Zain Jhanjhi, N. Z. Ahmad, Muneer Razzaq, Mirza Abdur Alshamrani, Sultan S. Malik, Yasir Jaafar, Fehmi Extended forgery detection framework for COVID-19 medical data using convolutional neural network |
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Medical data tampering has become one of the main challenges in the field of secure-aware medical data processing. Forgery of normal patients' medical data to present them as COVID-19 patients is an illegitimate action that has been carried out in different ways recently. Therefore, the integrity of these data can be questionable. Forgery detection is a method of detecting an anomaly in manipulated forged data. An appropriate number of features are needed to identify an anomaly as either forged or non-forged data in order to find distortion or tampering in the original data. Convolutional neural networks (CNNs) have contributed a major breakthrough in this type of detection. There has been much interest from both the clinicians and the AI community in the possibility of widespread usage of artificial neural networks for quick diagnosis using medical data for early COVID-19 patient screening. The purpose of this paper is to detect forgery in COVID-19 medical data by using CNN in the error level analysis (ELA) by verifying the noise pattern in the data. The proposed improved ELA method is evaluated using a type of data splicing forgery and sigmoid and ReLU phenomenon schemes. The proposed method is verified by manipulating COVID-19 data using different types of forgeries and then applying the proposed CNN model to the data to detect the data tampering. The results show that the accuracy of the proposed CNN model on the test COVID-19 data is approximately 92%. |
format |
Article |
author |
Gill, Sajid Habib Sheikh, Noor Ahmed Rajpar, Samina ul Abidin, Zain Jhanjhi, N. Z. Ahmad, Muneer Razzaq, Mirza Abdur Alshamrani, Sultan S. Malik, Yasir Jaafar, Fehmi |
author_facet |
Gill, Sajid Habib Sheikh, Noor Ahmed Rajpar, Samina ul Abidin, Zain Jhanjhi, N. Z. Ahmad, Muneer Razzaq, Mirza Abdur Alshamrani, Sultan S. Malik, Yasir Jaafar, Fehmi |
author_sort |
Gill, Sajid Habib |
title |
Extended forgery detection framework for COVID-19 medical data using convolutional neural network |
title_short |
Extended forgery detection framework for COVID-19 medical data using convolutional neural network |
title_full |
Extended forgery detection framework for COVID-19 medical data using convolutional neural network |
title_fullStr |
Extended forgery detection framework for COVID-19 medical data using convolutional neural network |
title_full_unstemmed |
Extended forgery detection framework for COVID-19 medical data using convolutional neural network |
title_sort |
extended forgery detection framework for covid-19 medical data using convolutional neural network |
publisher |
Tech Science Press |
publishDate |
2021 |
url |
http://eprints.um.edu.my/34345/ |
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1735570302391287808 |
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13.214268 |