What is a deepfake, its meaning and detection as Atrioc is caught viewing deepfakes of Pokimane

What is a deepfake, its meaning and detection as Atrioc is caught viewing deepfakes of Pokimane

Deepfakes are the most recent advancement in computer images, produced when artificial intelligence (AI) is trained to swap out one person’s likeness for another in a recorded video, know the meaning of a deepfake

Deepfake technology has emerged as the latest talk of the town. Know more about the Deepfake below.

What is a deepfake and its meaning explained as Atrioc is caught viewing deepfakes of Pokimane and Maya Higa

What is a deepfake? Everything you need to know about the AI-powered fake media

The simulation of reality by computers has improved over time. In place of the genuine locations and props that were historically frequent, modern cinema, for instance, extensively relies on computer-generated sets, scenery, and characters, and most of the time these sequences are virtually indistinguishable from reality.

How Does A Deepfake Operate And What Is It?

The name “Deepfake” is derived from the underlying artificial intelligence (AI) technology known as “deep learning.” To create phoney media that seems realistic, deep learning algorithms are used to swap faces in videos and digital content. These algorithms train themselves to solve issues when given enormous amounts of data.

Although there are various ways to make deep fakes, the most popular one makes use of face-swapping autoencoders in deep neural networks with autoencoders. A series of video clips of the person you want to insert in the target must come first, followed by a target video to serve as the foundation for the deepfake.

A Relatable Example

The target video could be a clip from a Hollywood film, for instance, while the films of the person you want to place in the movie could be unrelated footage you downloaded from YouTube.

Autoencoder

A deep learning AI algorithm called the autoencoder is tasked with watching the video clips to learn how the person appears from various perspectives and in various environments. Then it maps that person onto the person in the target video by identifying shared traits.

Generative Adversarial Networks

Generative Adversarial Networks (GANs), another type of machine learning, are incorporated into the process. GANs identify and fix any Deepfake problems over the course of several rounds, making it more challenging for Deepfake detectors to identify them.

In order to “learn” how to create fresh instances that closely resemble the real thing, GANs are also frequently utilised as a popular technique for the production of Deepfakes.

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Restrictions On The Technology 

The Chinese apps Zao, DeepFace Lab, FaceApp (a picture editing app with built-in AI techniques), Face Swap, and the since-removed DeepNude—a particularly risky app that produced fake nude photographs of women—all make creating deepfakes simple even for beginners.

On GitHub, a community for open-source software development, there are a lot of Deepfake programmes available. While some of these programmes are significantly more likely to be used maliciously, others are more frequently used for purely amusing reasons, which is why Deepfake development is not prohibited.

Many experts predict that as technology advances, deepfakes will become much more sophisticated and pose more substantial hazards to the public in the form of electoral meddling, political unrest, and increased criminal activities. 

Uses For Deepfakes 

While the capacity to automatically swap faces in order to produce convincing and realistic-looking synthetic video has some intriguing, innocuous applications (such as in gaming and film). It is undoubtedly a risky technology with some unsettling implications. Making fake pornography was one of the first uses of deepfakes in the real world.

Misuse Of The Technology (Revenge App)

In 2017, a Reddit user going by the handle “Deepfakes” set up a pornographic forum with actors who had their faces switched. Since then, porn (especially revenge porn) has frequently made headlines, severely tarnishing the reputations of famous people. deeptrace research states that 96% of deepfake movies discovered online in 2019 were pornographic.

Politicians have also employed “deep fake” videos. For instance, a Belgian political party broadcast a video of Donald Trump speaking and urging Belgium to leave the Paris Climate Agreement in 2018. But that address was a deepfake; Trump never gave it. Deepfakes have previously been used to produce deceptive videos, and tech-savvy political gurus are preparing for a new wave of fake news that will incorporate these convincingly realistic Deepfakes.

Of course, not every deep-fake video is a threat to democracy’s existence. There are several Deepfakes that are utilised in humour and satire, such as chips that address issues like what Nicolas Cage would appear like in “Raiders of the Lost Ark?”

Are Only Videos Deepfakes?

Deepfakes aren’t merely found in videos. A rapidly expanding field with a vast array of uses is deepfake audio.

With just a few hours or minutes of audio of the person whose voice is being cloned, realistic audio “deepfakes” can now be created using deep learning algorithms. The fake audio of a CEO was used to commit fraud last year once a model of the voice was created.

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Deepfake audio has applications in both medical voice replacement and computer game design. With this technology, programmers can now give in-game characters the freedom to say anything at the moment rather than having to rely on a small number of scripts that were recorded before the game was released.

Identifying A Profound Fake

As Deepfakes spread, society as a whole will likely need to acclimatise to seeing Deepfake films in the same way that internet users have become skilled at spotting other types of fake news.

More Deepfake technology frequently needs to be developed in order to identify it and stop it from spreading, which can set off a vicious cycle and potentially cause more harm. This is the situation with cybersecurity.

There Are A Few Telltale Signs Of Deepfakes, Including:

  • Current Deepfakes struggle to properly animate faces, which leads to videos where the subject either never blinks, blinks too frequently, or blinks in an unnatural way. However, new Deepfakes were produced that did not have this issue when academics from the University of Albany published a study finding the blinking irregularity.
  • Look for skin or hair issues, as well as faces that appear to be blurrier than the surroundings in which they are situated. Potentially unnaturally soft-looking focus
  • Is the illumination unnatural-looking? The lighting of the clips that served as models for the false video is frequently kept by deepfake algorithms, even when it is not a good match for the lighting in the target video.
  • If the video was fabricated but the original audio was not carefully modified, the audio might not seem to fit the person.

Using Technology To Combat Deepfakes

While deepfakes will only get more convincing over time as techniques advance, we’re not helpless against them. A number of businesses, some of them startups, are working on techniques for identifying deepfakes.

Sensity, for instance, has created a platform for deepfake identification that works like antivirus and notifies consumers through email when they are watching something that contains the telltale signs of artificial intelligence-generated fake media. The deep learning techniques employed by Sensity to produce phoney videos are the same.

The method used by Operation Minerva to identify deepfakes is simpler. The algorithm used by this company evaluates potential deepfakes against previously “digitally fingerprinted” known videos. For instance, it can identify instances of revenge porn by spotting that the Deepfake video is really a modified version of an already-catalogued video by Operation Minerva.

The Deepfake Detection Challenge, an open, collaborative endeavour to promote the development of new tools for identifying deepfakes and other forms of manipulated media, was also organised by Facebook the previous year. The contest offered cash awards up to $500,000.

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