Proactive AI-driven deepfake detection
to protect your finances
and reputation
1 out of only 3 companies with ISO certified for single image passive liveness
0% penetration rates across rigourous attacks with ~100% true positive.
HyperVerge ranked among the top 10 face recognition solutions
Ranked 3rd on NIST FRVT paperless travel leaderboard
Unauthorized transactions and fund manipulation
Losing customers to competitors due to lack of trust.
By not detecting deepfakes you risk security, trust and revenue.
Image detection model - catches
inconsistency in images by using vectors
Video detection model - analyzes each frame
to identify anomalies
Detect and catch different types of
injection algorithms
Checks for video injections
Achieve over
$3M in savings
Best in class
accuracy of 98.5%
Global reach of
195+ countries
Quick detection
in under 3s
In the current landscape of digital content, deepfake technology poses a significant threat, enabling the creation of fake videos and images that can pose as a fake person while onboarding. Deepfake detection plays a crucial role in combating this issue by employing advanced techniques rooted in deep learning and artificial intelligence. Ongoing research focuses on developing robust detection methods to discern real content from manipulated media, contributing to the prevention of the dissemination of fake news and manipulated visuals.
Deepfake detection models leverage neural networks and computer vision algorithms to analyze videos and images for signs of manipulation. These models specialize in recognizing patterns indicative of deepfakes, examining facial regions, synthetic portrait videos, and considering factors such as facial hair and the presence of multiple faces. By interpreting residuals and employing state-of-the-art techniques in image and video analysis, these models can effectively identify the presence of generated images, thus contributing to the ongoing battle against the proliferation of fake content.
Detecting fake videos and images presents a significant challenge due to the evolving sophistication of deepfake technology. The deepfake detection challenge involves addressing issues such as lip syncing, image manipulation, and the incorporation of biological signals. Researchers are actively developing and refining detection methods using machine intelligence and leveraging datasets that encompass a wide range of ordinary people and scenarios. Ongoing research, as documented in IEEE Transactions and other scientific publications, aims to stay ahead of this new threat by enhancing the accuracy and efficiency of deepfake detection models.
Deepfake detection models are designed to discern real content from manipulated media across diverse industry domains, from banking, digital lending, insurance, and gig economy. These models utilize advanced techniques in face recognition, analyzing synthetic videos, They undergo rigorous testing on diverse datasets, including a test set with various scenarios and conditions, achieving high accuracy rates measured in percentage points. By continuously improving their ability to find evidence of manipulation, these models play a crucial role in upholding the integrity of original videos and images in the face of the deepfake phenomenon.
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