Deepfake attacks have moved out of social media headlines and into the places where businesses actually operate. Finance teams are getting calls from people who sound exactly like their CFO. Video interviews are being faked. Payment approvals are being manipulated over live video calls. Here are 10 platforms enterprise teams are deploying in 2026 to stay ahead.
1. Sensity AI
Sensity AI detects manipulated visual content across images, videos, and audio using multimodal AI models. Beyond detection, it tracks how synthetic media spreads across platforms and networks after creation. It’s widely used in threat intelligence, corporate security, and media verification.
2. Diopter
Diopter AI monitors live conversations across Teams, Zoom, Webex, Google Meet, and VoIP in real time, analyzing both synthetic media signals and the social engineering patterns that typically precede fraud. It scores each interaction continuously and gives fraud teams a live risk verdict before any payment, credential reset, or approval is acted upon. It’s built for fintech companies and enterprise security teams where high-value decisions happen over voice and video.
3. Reality Defender
Reality Defender screens video, audio, and images in real time inside production pipelines, built for high-throughput environments like financial services onboarding. It catches AI-generated identity submissions before accounts are provisioned, without adding noticeable latency to the user experience.
4. Pindrop Security
Pindrop analyzes acoustic signatures and behavioral patterns in voice calls to detect synthetic speech and voice cloning. It has over a decade of focus on telephony fraud and is a standard security layer in banking contact centers where voice authentication is still a front-line defense.
5. DeepTrust
DeepTrust validates both identity documents and biometric media in a single workflow, closing the gap that lets attackers pair a real document with a synthetic face, or vice versa. It’s used in regulated industries where KYC compliance and fraud prevention need to work together.
6. GetReal Security
GetReal Security applies forensic analysis to verify the authenticity of specific enterprise assets like executive video messages, legal recordings, and procurement media. It’s built for high-stakes situations where a probabilistic confidence score isn’t sufficient.
7. Sift
Sift analyzes user behavior, device signals, and interaction patterns to identify anomalies associated with synthetic identity fraud and account takeovers. It works best as a complementary layer alongside media-based detection, covering what visual analysis alone cannot catch.
8. Hive Moderation
Hive provides deepfake detection and content moderation via API for platforms managing large volumes of user-generated content. It’s optimized for coverage at scale rather than forensic depth, making it practical for social platforms and consumer marketplaces.
9. Intel FakeCatcher
FakeCatcher detects deepfakes by analyzing blood flow patterns in facial skin rather than looking for visual artifacts. Since generative AI can’t yet reproduce these physiological signals, it catches high-quality deepfakes that are specifically engineered to pass standard screening.
10. Facia
Facia combines facial recognition, liveness detection, and deepfake analysis in one platform for fintech and regulated financial services onboarding. The integration eliminates the handoff gaps between separate tools where fraud often slips through.
Conclusion
The common thread is clear: detection is moving closer to the moment a decision is made. Organizations that still have no coverage for live interactions are carrying the biggest gap in their fraud exposure right now.