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Swayam Patnaik
Swayam Patnaik

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Deepfake Nightmares: Mitigating the Threat of AI-Fueled Masquerade Attacks

Introduction

The digital world solely relies on authenticity and privacy. We connect with friends and family, conduct business, and consume information, all based on the belief that what we see online is real. Now we are in a world where everything available online can't be trusted - a world of DEEPFAKE where the MASQUERADE of authenticity is easily done by anyone with an internet connection.
But what exactly are masquerade and deepfakes, and how do they work?

Masquerade Attacks- Attackers impersonate genuine users or systems to gain unauthorised access to sensitive informations which will look as a authorised access. Hackers often obtain the username and password to get access which becomes their mask which prevents them from being caught.They can also identify weak points in a network which becomes their entry points.

Deepfake is basically an image or recording that has been intentionally altered which misrepresents someone as doing or saying something which was infact never done by him/her. It is a machine learning generated image,video or audio which replaces human's face or body with that of some other person.
Deepfakes can be used for entertainment purposes, like creation of humorous immitation. But on the other hand it can also be used for heinous activities like spreading misinformation, impersonating someone in a video to damage their reputations and many more.
As AI technology continues to develop, it is harder to disguise them from real footage.

Masquerading through Deepfake

2FA(Two Factor Authentication) was introduced to add an extra layer of security to protect personal/sensitive information. But now a deepfake video can be used to bypass a 2FA or multi-factor authentication systems that rely on face recognition. Facial recognition systems find it difficult to differentiate between actual human and a deepfake video which permits the attacker to get through the 2FA system.
Therefore Multi-Factor Authentication should not only include facial recognition, rather it should be combined with other methods such as One-Time Passwords(OTP), verifying from the account already logged in from different device, requirement to answer previously set questions, etc.

Fightback against Deepfakes

One should cross-check the informations before sharing.
Users should be educated to tackle the Deepfakes like noticing unnatural body language, awkward lip syncing, not believing evidence from untrusted sources, etc.
Phising attacks are often used to steal login credentials, so one should be cautious of suspicious emails and verify the sender initially.
Data sharing practices should be checked as the less personal data available publicly, the harder it will become for the attackers to create a convinving deepfake.
Ultimately by staying up to date, informed, knowing the possible threats, we can protect ourselves and also our information from deepfake fueled masquerade attacks.

Conclusion

The future of deepfake remains uncertain. As deepfakes become more sophisticated, so will the methods for detecting and mitigating them. However, technology alone won't win this battle. The human element is also crucial. Deepfakes may pose a challenge, but they don't have to be a nightmare unless we are taking care of our personal informations.

In the age of deepfakes, seeing is no longer believing.

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