Research-Grade Detection Technology

How DeepGuard
Actually Works

Our detection system combines six independent analysis layers, trained on over 2 million labeled samples across images, video, audio, and text. Here's the full technical picture — no marketing fluff.

95.3%
Average accuracy
2.1%
False positive rate
2M+
Training samples
< 8s
Avg. analysis time

Six Detection Layers

Each layer catches a different class of manipulation. Results are cross-validated — a single layer can't produce a false verdict.

Pixel-Level Forensics

Analyzes individual pixel neighborhoods for statistical anomalies introduced by diffusion models and GANs. Detects upsampling artifacts, frequency domain inconsistencies, and unnatural noise patterns.

Frequency domain analysisNoise residual mapsPRNU fingerprinting

Multi-Model Ensemble

Runs 4 independently trained detection models in parallel and cross-validates results. No single model failure can produce a false verdict — all models must agree for high-confidence outputs.

CNN classifierVision transformerFrequency analyzerMetadata inspector

Semantic Consistency Check

Detects logical inconsistencies that AI models commonly produce: impossible lighting, anatomical errors, background incoherence, and text rendering failures.

Object relationship analysisShadow/lighting consistencyAnatomical plausibility

Metadata & Provenance

Inspects EXIF data, file structure, and modification history. AI-generated files typically lack camera metadata, have inconsistent timestamps, or show signs of post-processing software.

EXIF integrity checkFile structure analysisModification history

Temporal Analysis (Video)

For video content, analyzes inter-frame consistency, temporal coherence of facial features, and blending boundary artifacts that appear at face-swap edges across frames.

Frame-by-frame comparisonOptical flow analysisBounding box tracking

Prosody & Voice Forensics

Audio analysis detects TTS synthesis artifacts: unnatural prosody patterns, spectral inconsistencies, missing breath sounds, and the characteristic "flatness" of AI-generated speech.

Mel spectrogram analysisProsody modelingBreath/pause detection
Independent Benchmark Results

Accuracy by AI Model

Tested on held-out validation sets not seen during training. Numbers reflect detection accuracy on real-world content, not curated lab samples.

AI Model / Tool
Accuracy
False Positive
Test Samples
Midjourney v6
96.2%
1.8%
42,000
DALL·E 3
94.8%
2.3%
38,500
Stable Diffusion XL
95.7%
2.1%
55,000
Adobe Firefly
93.4%
3.1%
28,000
DeepFaceLab
97.1%
1.4%
31,200
FaceSwap
96.8%
1.6%
29,800
ElevenLabs (voice)
94.1%
2.7%
22,000
Runway Gen-2 (video)
91.3%
3.8%
18,400

Benchmarks conducted Q4 2024. Results may vary on highly compressed or low-resolution content. Full methodology available on request.

Training Datasets

Models are trained on publicly available academic datasets plus proprietary collections. We do not train on user-submitted content.

FaceForensics++TU Munich
1,000 videos
Video deepfakes
DFDC (Facebook)Meta AI
128,154 videos
Deepfake faces
WildDeepfakeOpen source
7,314 clips
In-the-wild deepfakes
LAION-5B (subset)LAION
500K images
AI-generated images
GenImageAcademic
1.35M images
Multi-model AI images
ASVspoof 2021Interspeech
22,617 clips
Voice spoofing/TTS

Privacy & Data Handling

Zero Data Retention

Uploaded files are processed in isolated containers and deleted immediately after analysis. We never store your content.

Encrypted Transit

All file transfers use TLS 1.3. Files are processed in memory where possible and never written to persistent disk.

No Training on User Data

We explicitly do not use submitted content to improve or retrain our models. Your data is yours.

Audit Logs

Enterprise customers receive full audit logs of all API calls, analysis results, and access events for compliance.

Standards & Certifications

SOC 2 Type IIIn progress
ISO/IEC 27001Compliant
GDPRCompliant
CCPACompliant
NIST AI RMFAligned

See the technology in action

Upload an image, video, or audio file and see the full detection report — including heatmap, forensic analysis, and confidence scores.