AI Integrity Solutions for Deepfake Identification and Prevention

Authors

  • Law Kian Seng
  • NORMAISHARAH MAMAT Universiti Teknologi Malaysia, Jalan Sultan Yahya Petra, Universiti Teknologi Malaysia, 54100 Kuala Lumpur, Wilayah Persekutuan Kuala Lumpur
  • Hafiza Abas
  • Wan Noor Hamiza Wan Ali

DOI:

https://doi.org/10.11113/oiji2024.12n1.297

Keywords:

Deepfakes, Identification, Prevention, AI Intergrity, Awareness

Abstract

The increasing complexity of deepfake technology has sparked significant worries over individual privacy, the spread of false information, and deficiencies in cybersecurity. Deepfakes have the ability to effectively modify audio and visual content, resulting in a growing challenge to differentiate between real and fake content. To address this critical challenge, the study is conducting a survey to reveal a broad range of perspectives on the familiarity, encounters, and concerns related to deepfake technology. In addition, the study evaluates the effectiveness of current strategies in addressing the spread of deepfake material and proposes future approaches for improving the integrity of AI. The survey was delivered digitally, and responses were examined to provide an in- depth analysis of the latest techniques and difficulties in the context of deepfake detection. The outcomes demonstrate a range of perspectives on understanding deepfakes with an explicit agreement on the importance of risk presented by harmful deepfake applications. Although the participants showed an understanding of the available interventions, they also identified considerable challenges and the need for improved awareness, robust detection tools, and ethical standards in AI development to address the challenges posed by deepfakes with the present detection method. Implementing AI ethical guidelines to avoid deepfakes has a significant and beneficial effect on several industries by providing protection against their harmful effects. By fostering AI ethical guidelines, these policies are able to foster societal trust, mitigate risk, and cultivate a more robust digital environment.

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Published

2024-06-28

How to Cite

Law Kian Seng, MAMAT, N., Abas, H., & Wan Ali, W. N. H. (2024). AI Integrity Solutions for Deepfake Identification and Prevention. Open International Journal of Informatics, 12(1), 35–46. https://doi.org/10.11113/oiji2024.12n1.297