Deepfakes: A Complete Analysis of Their Impact and Current Challenges

Last update: 1 June, 2026
  • Deepfake technology uses deep learning to create hyper-realistic audiovisual content capable of impersonating identities.
  • They represent a critical threat to privacy, financial security, and the stability of global democratic processes.
  • Detection requires a detailed analysis of visual and auditory anomalies and the use of specialized artificial intelligence tools.
  • The European Union and Spain are implementing legal frameworks such as the AI ​​Act to mandate the labeling of synthetic content.

Deepfake analysis

You've probably come across a video on social media that left you speechless, wondering if what you were seeing was real or an elaborate hoax. We're talking about deepfakes, those audiovisual pieces that, thanks to artificial intelligence, make someone say or do things that never happened in real life, achieving a realism that frightens and that tests our ability to discern the truth.

It's not just about fun filters to change your face in an app, but a powerful tool that can be used for both film and the most sophisticated deception. In a world where Information flies At breakneck speed, understanding how these "deep falsehoods" work is fundamental so that we are not fooled and know how to protect our privacy in the digital environment.

What exactly are deepfakes and how do they originate?

AI technology

The term is a play on words between deep learning (deep learning) and fake (Fake). Basically, these are image, video, or audio files that have been manipulated using AI software to appear authentic. Although image manipulation dates back to the 19th century with manual retouching of photographs, the qualitative leap came in 2017 through Reddit, where fake pornographic videos of famous actresses began to circulate.

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To achieve this effect, AI uses neural networks that mimic the workings of the human brain. Specifically, they are based on the Convolutional Neural Networks (CNN) to process images and detect patterns like textures and edges. But the real "brain" behind this is the Generative Adversarial Networks (GAN)which consist of two algorithms fighting each other: one creates the fake image and the other tries to detect the flaw; this process is repeated infinitely until the forgery is virtually indistinguishable of reality.

Variational Autoencoders (VAEs) also come into play, compressing and reconstructing facial features so that the target face mimics the gestures of the source. All of this relies on open-source libraries such as TensorFlowwhich allow training models with thousands of photographs and audio recordings of a person until capturing every subtle movement of their lips or the exact tone of their voice.

Variants and modalities of synthetic impersonation

Digital risks

Not all deepfakes are the same. We mainly find three categories depending on the format being manipulated:

  • Deepfaces: They focus on creating still images or videos where one person's face is replaced by another, generating sequences that look 100% real.
  • Deepvoices: The target here is the voice. Someone's speech pattern is cloned to make them say phrases they never uttered. It's a lethal tool for phone scams.
  • Complex videos: They combine image and audio manipulation to create complete scenes, adjusting lighting and resolution to capture wrinkles or skin textures.
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The training process is exhaustive: first, data is collected (photos from various angles, audio recordings), the formats are normalized, and key features such as eyes and mouth are labeled. After thousands of iterations, the result is a hyperrealistic file that can deceive even the most trained eyes.

The social impact and the real dangers

When we talk about risks, the list is long and quite worrying. One of the most critical points is the political disinformationImagine a video of a president calling for the surrender of an army or making inflammatory statements just before an election; even if it is later denied, the emotional impact has already affected the voter.

On a personal level, the use of deepfakes to create non-consensual pornography It's a nightmare. It mostly affects women, whether celebrities or ordinary girls, destroying reputations and causing devastating psychological damage. In Spain, cases like the one in Almendralejo have raised alarms about how minors are using these tools to harass their peers.

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Nor can we forget the financial fraudThere have been reported cases where company employees transfer millions of dollars after a video call with a boss who was actually a perfectly coordinated deepfake. This combination of social engineering and advanced technology makes it possible for... the scam is much more effective and difficult to track, similar to how the pig butchering scam.

A practical guide to detecting a deep lie

AI Legislation

Even though AI is advancing, it still leaves some clues we can use to avoid falling into traps. Here are several tricks to analyze whether a video is suspicious:

  • The blink: Look at the eyes. Deepfakes tend to blink much less than a real human because the algorithm has trouble replicating this gesture naturally.
  • Lip sync: Sometimes the sound doesn't perfectly match the mouth movement, or there are abrupt jumps in the audio.
  • Problem areas: Look at the inside of the mouth, the teeth and the tongue; AI often fails spectacularly at rendering these details.
  • Edges and skin: Look for blurred edges around the face, overly smooth skin (as if it were an extreme beauty filter), or lighting that doesn't match the background.
  • Duration and context: Very short videos with implausible messages are usually a red flag. It's always vital compare the source original.
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From a more technical point of view, there are tools such as FaceForensics ++ which achieve a very high effectiveness in detecting artificial patterns, although deepfake creators are always looking for ways to bypass these barriers.

The legal framework and the regulatory response

Fortunately, the law has not been forgotten. In the European Union, it has been approved AI Act (AI Regulation)which will come into force gradually between 2025 and 2026. This regulation requires that any artificially generated content carry a watermark that is, clearly identified, a measure similar to how YouTube automates the tagging of AI-generated videos to strengthen transparency.

In Spain, the Penal Code already offers tools to combat these abuses. Article 197 It punishes the dissemination of intimate images without consent, while articles 208 to 210 protect against slander and libel. Furthermore, if a deepfake is used to commit fraud, the crimes of fraud apply. We can also resort to AEPD Priority Channel to request the urgent removal of sensitive content.

Despite this, there is still an educational gap. In Spain and Germany, a large part of the population admits to not knowing what a deepfake is, which makes us much more vulnerable to social engineering attacks. Digital literacy is the only real vaccine against this epidemic of visual lies.

The fight against profound falsehoods is a constant challenge that requires the union of technology, law, and, above all, a very sharp critical sense on our part. As AI continues to evolve to make us believe the impossible, our best defense will be distrust the obviousVerify every piece of data and foster a culture of digital security where authenticity is the most valued asset.

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