它看起来像我,但不是我:关于深度造假的社会影响

Jennifer A. Fehring, Tamara Bonaci
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引用次数: 0

摘要

深度造假是利用深度学习技术生成的图像或视频,以改变媒体的原始条件。这项技术的潜在用途包括讽刺内容,在滑稽的场景中描绘公众人物;生成音频以模仿特定的声音;将一个不知情的人的脸插入到可能令人尴尬的内容中,例如,色情场景。随着自动编码器和生成式对抗网络(gan)等深度伪造技术变得更加先进和易于使用,深度伪造变得更容易创建,也更可信。这对个人和机构的安全构成了一些严重的威胁,因为场景可以被修改以改变公众的看法。虽然识别深度伪造的技术确实存在,但这些方法必须与深度伪造技术一样快速发展,以保持其准确性。此外,深度造假的法律后果有限,因此继续倡导加强对虚假内容的保护至关重要。
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It looks like me, but it isn’t me: On the societal implications of deepfakes
Deepfakes are images or videos generated using deep learning technology to change the original conditions of a piece of media. Potential uses of this technology range from satirical content, depicting public figures in comical scenarios; to generating audio to mimic a specific voice; to inserting the face of an unknowing individual into potentially embarrassing content, for example, a pornographic scene. As deepfake technologies, such as autoencoders and generative adversarial networks (GANs), become more advanced and accessible, deepfakes become easier to create and more believable. This poses some serious threats to individual and institutional safety, as scenes can be modified to alter public perception. Although technology to identify deepfakes does exist, it is essential that these methods progress as rapidly as deepfake technology so that they remain accurate. Additionally, legal consequences for deepfakes are limited, so continued advocacy for increased protection against false content is crucial.
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来源期刊
IEEE Potentials
IEEE Potentials Social Sciences-Education
CiteScore
1.40
自引率
0.00%
发文量
94
期刊介绍: IEEE Potentials is the magazine dedicated to undergraduate and graduate students and young professionals. IEEE Potentials explores career strategies, the latest in research, and important technical developments. Through its articles, it also relates theories to practical applications, highlights technology?s global impact and generates international forums that foster the sharing of diverse ideas about the profession.
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