Understanding Deepfakes: A Comprehensive Analysis of Creation, Generation, and Detection

S. Alanazi, Seemal Asif
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Abstract

This paper provides a comprehensive analysis of deepfakes, focusing on their creation, generation, and detection. Deepfakes are realistic fabricated videos, images, or audios generated using artificial intelligence algorithms. While initially seen as a source of entertainment and commercial applications, the negative social consequences of deepfakes have become apparent. They are misused for creating adult content, blackmailing individuals, and spreading misinformation, leading to a decline in trust and potential societal implications. The paper also discusses the importance of legislation in regulating the use of deepfakes and explores techniques for their detection, including machine learning and natural language processing. Understanding deepfakes is essential to address their ethical and legal implications in today's digital landscape.
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理解深度造假:对创作、生成和检测的综合分析
本文提供了深度伪造的综合分析,重点是它们的创建、生成和检测。深度伪造是使用人工智能算法生成的逼真的视频、图像或音频。虽然最初被视为娱乐和商业应用的来源,但深度造假的负面社会后果已经变得很明显。它们被滥用于制造成人内容、勒索个人和传播错误信息,导致信任度下降和潜在的社会影响。本文还讨论了立法在规范深度造假使用方面的重要性,并探讨了检测深度造假的技术,包括机器学习和自然语言处理。了解深度造假对于解决其在当今数字环境中的道德和法律影响至关重要。
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