Skip to content
deepfake

Mar 08, 2024

How to Identify Fake Content Made from Deepfake

Have you ever come across content like photos, videos, or audio featuring public figures that turned out to be fake? Be careful, as it could be a deepfake!

Have you ever come across content like photos, videos, or audio featuring public figures that turned out to be fake? Be careful, as it could be a deepfake!

Deepfake refers to fake photos, videos, and audio that are reproduced from their original sources using artificial intelligence (AI). Deepfake combines the words "deep learning" and "fake," referring to video or audio content that has been manipulated with AI technology to appear very realistic. Try looking on social media or video platforms, there is a plethora of deepfake content out there.

Deepfake is indeed entertaining. However, because it has become increasingly widespread, deepfake has the potential to deceive or generate fake news (hoaxes). How can you identify deepfake content? Well, this article will explain it.

Detecting Deepfake Content

Deepfake technology is becoming more advanced. Identifying its content is becoming increasingly difficult. However, there are several things that can be done to identify artificially produced deepfake content.

1.  Unnatural Movements

Try to observe facial expressions and movements in some deepfake videos. The movements are unnatural. Facial and body movements in real humans are more natural and fluid, while in deepfake, they appear jerky and unnatural. In fact, most deepfakes display unnatural and unsynchronized movements among body parts.

2. Audio and Video Desynchronization

Synchronization between audio and video is another characteristic of potential deepfake. Genuine videos have consistent synchronization between visual and audio elements. However, deepfakes often struggle to synchronize these aspects, resulting in differences between audio and video.

3. Eye Movement and Blink Detection

Since deepfake is AI-generated, eye movement or blinking is usually unnatural. Unfortunately, increasingly sophisticated deepfakes make eye movement detection difficult. Using detection algorithms to monitor eye movement and blinking in video subjects can help identify manipulation.

4. Inconsistent Colors and Shadows

Inconsistencies in color and shadows can help identify deepfake videos. This occurs because AI still struggles to replicate lighting conditions and shadows in the real world accurately. Sometimes, colors and shadows are also distorted.

5. Voice and Background Analysis

Analyzing the voice of the deepfake subject and the background voice in the video is also an important technique in detecting deepfake content. Inconsistent voice changes or mismatches between lip movements and the resulting voice can be indicators of manipulation. Additionally, detailed voice analysis in the background of the video can help identify altered videos.

Currently, verification and authentication technologies can prevent deepfake access in the form of Presentation Attacks or Injection Attacks. However, these technologies also compete with increasingly sophisticated deepfakes. 

Various Types of Deepfake Attacks

Deepfake in social media may appear common and often. But what about deepfake in verification process of mobilie application?

First, let's understand the various uses of deepfake for fraud. Deepfake attacks are divided into two types: presentation attacks and injection attacks.

1. Presentation Attack

A presentation attack is an attempt to defraud biometric authentication systems by presenting fake biometrics. These biometrics can be in the form of photos, masks, or other disguises to trick biometric systems. The goal is illegal access to security systems. Deepfake technology can create images or videos that are very realistic and taken from real people.

2. Injection Attack

This type of attack is more sophisticated than Presentation Attack. It involves injecting code or malicious commands into biometric systems to gain unauthorized access and manipulate the system. For example, scammers inject deepfake audio into voice recognition systems for verification. Similar to Presentation Attack, the goal of this attack is to gain illegal access to security systems.

As part of the data protection solution, VIDA offers the latest technology development called VIDA Deepfake Shield. In this regard, VIDA has been strengthened with the ability to control the entire process towards biometric system access, so that any fraud loophole can be quickly prevented. Facing evolving cyberattacks, adopting solutions like VIDA Deepfake Shield is no longer an option but a necessity.

 

VIDA - Verified Identity for All. VIDA provides a trusted digital identity platform.

Latest Articles

Deepfake Can Deceive Health Insurance Claims. How?
deepfake

Deepfake Can Deceive Health Insurance Claims. How?

Deepfake, which is an AI product in the form of fake images, videos, and audio, has evolved into a lurking threat to the biometric verifica...

May 13, 2024

Beware, Deepfake Threatens Healthcare Services
deepfake

Beware, Deepfake Threatens Healthcare Services

The expansion of telemedicine has made medical information increasingly accessible on the internet. However, as telemedicine advances, deep...

May 08, 2024

Understanding Deepfake Attacks in the Identity Verification Process
deepfake

Understanding Deepfake Attacks in the Identity Verification Process

Before becoming a crime loophole, deepfakes circulated on social media as entertainment. However, deepfakes evolved into crimes when the sa...

May 03, 2024