ASIA unversity:Item 310904400/115524
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    Please use this identifier to cite or link to this item: http://asiair.asia.edu.tw/ir/handle/310904400/115524


    Title: AI-enabled digital forgery analysis and crucial interactions monitoring in smart communities
    Authors: Sedik, Ahmed;Sedik, Ahmed;Male, Yassine;Maleh, Yassine;El, Ghada M.;Banby, Ghada M. El;Ashraf, Ashraf A.M.;Khalaf, Ashraf A.M.;Abd, Fathi E.;Fathi, E. Abd El-Samie;Bhoosha, Brij;Gupta, Brij Bhooshan;Konstantinos;Psannis, Konstantinos;Abd, Ahmed A.;Ahmed, Ahmed A. Abd El-Latif
    Contributors: 資訊電機學院資訊工程學系
    Keywords: Forgery detection;Deep learning;IoT;Smart cities;Security analysis
    Date: 2022-04-01
    Issue Date: 2023-03-29 02:30:30 (UTC+0)
    Publisher: 亞洲大學
    Abstract: Digital forgery has become one of the attractive research fields in today’s technology. There are several types of forgery in digital media transmission, especially digital image transmission. A common type of forgery is copy-move forgery (CMF). The CMF may be encountered in streets, railway stations, underground stations, or festivals. This type of forgery may lead to hugger-mugger in some cases. Therefore, there is a need to find a sufficient countermeasure mechanism to detect image forgeries. This paper presents a new CMFD approach that depends on deep learning for IoT based smart cities. Two well-known deep learning models, namely CNN and ConvLSTM, are adopted for CMFD. The proposed models are tested on MICC-220, MICC-600 and MICC 2000 datasets for validation. Several tests are performed to verify the effectiveness of the proposed models. The simulation results reveal that the testing accuracy reaches 95%, 73%, and 94% for MICC-F220, MICC-F600 and MICC-F2000 datasets. In addition, the proposed approach achieves an accuracy of 85% for a combined set of all datasets.
    Appears in Collections:[Department of Computer Science and Information Engineering] Journal Artical

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