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Abstract
In-field image sensor defects develop almost continually over a camera’s lifetime. Since these defects accumulate over time, a forensic analyst can approximate the age of an image under investigation based on the defects present. In this context, the temporal accuracy of the approximation is bounded by the different defect onset times. Thus, the approximation of the image age based on in-field sensor defects can be regarded as a multi-class classification problem. In this paper, we propose to utilize two well-known machine learning techniques (i.e. a Naive Bayes
Classier and a Support Vector Machine) to solve this problem. The accuracy of each technique is empirically evaluated by conducting several experiments, and the results are compared to the current state-of-the art in this field. In addition, the prediction results are assessed individually for each class.
Classier and a Support Vector Machine) to solve this problem. The accuracy of each technique is empirically evaluated by conducting several experiments, and the results are compared to the current state-of-the art in this field. In addition, the prediction results are assessed individually for each class.
Originalsprache | Englisch |
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Publikationsstatus | Veröffentlicht - 2021 |
Veranstaltung | International Workshop on Digital-forensics and Watermarking - online, Melbourne, Australien Dauer: 25 Nov. 2020 → 27 Nov. 2020 Konferenznummer: 19 http://iwdw.site/ |
Konferenz
Konferenz | International Workshop on Digital-forensics and Watermarking |
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Kurztitel | IWDW 2020 |
Land/Gebiet | Australien |
Ort | Melbourne |
Zeitraum | 25/11/20 → 27/11/20 |
Internetadresse |
Schlagwörter
- digital image forensics
- in-field sensor defects
- image age approximation
- machine learning
Systematik der Wissenschaftszweige 2012
- 102 Informatik
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A Machine Learning Approach to Approximate the Age of a Digital Image
Jöchl, R. (Redner/in)
26 Nov. 2020Aktivität: Gastvortrag oder Vortrag › Vortrag › science to science / art to art