image-forensics-mcp
An MCP server that enables AI assistants to analyze images for AI-generated content using noise maps, error level analysis, frequency analysis, spectral decay, color analysis, and metadata inspection.
README
Image Forensics MCP Server
An MCP (Model Context Protocol) server that gives AI assistants forensic analysis capabilities to help detect AI-generated images. Uses noise maps, Error Level Analysis, FFT frequency analysis, spectral decay analysis, color channel analysis, and metadata inspection.
Install
One command — requires uv:
claude mcp add -s user image-forensics -- uvx --from git+https://github.com/surewht/image-forensics-mcp image-forensics-mcp
That's it. Restart Claude Code and the tools are available.
Alternative: install from local clone
git clone https://github.com/surewht/image-forensics-mcp.git
cd image-forensics-mcp
claude mcp add -s user image-forensics -- uvx --from . image-forensics-mcp
Manual config
Add to ~/.claude.json:
{
"mcpServers": {
"image-forensics": {
"type": "stdio",
"command": "uvx",
"args": ["--from", "git+https://github.com/surewht/image-forensics-mcp", "image-forensics-mcp"]
}
}
}
Tools
| Tool | What it does |
|---|---|
noise_map |
Extracts the noise pattern by subtracting a blurred version. AI images have unnaturally uniform noise. Returns visualization + statistics. |
error_level_analysis |
Multi-scale ELA — resaves at multiple JPEG qualities and analyzes error patterns. Detects splicing and compression inconsistencies. |
frequency_analysis |
2D FFT spectrum analysis. Detects GAN grid artifacts and unusual frequency distributions. |
spectral_decay_analysis |
Power spectral density curve fitting (1/f^β). Based on CVPR 2025 research. Natural images follow characteristic decay; AI images may deviate. |
color_analysis |
RGB channel correlation, gradient correlation, entropy, and saturation analysis. Based on CVPR 2025 "Secret Lies in Color" research. |
metadata_check |
EXIF/metadata inspection for AI tool signatures (Stable Diffusion, DALL-E, Midjourney, etc.) + AI resolution fingerprinting. |
full_forensic_report |
Runs all 6 analyses, saves visualizations to /tmp/image-forensics/, returns a categorized verdict. |
Usage
In Claude Code, just ask:
Analyze this image for AI generation: /path/to/image.jpg
Or use individual tools:
Run a noise map analysis on /path/to/image.png
Check the metadata of /path/to/image.webp
How the verdict works
The full_forensic_report categorizes findings into three tiers:
| Tier | What triggers it | Example |
|---|---|---|
| Definitive | AI tool signatures in metadata (SD parameters, generation prompts) | Stable Diffusion PNG with parameters chunk |
| Strong | Forensic anomalies rarely seen in real photos (uniform noise, GAN artifacts, spectral anomalies, extreme saturation) | GAN periodic patterns in FFT spectrum |
| Weak/Ambiguous | Indicators also caused by social media processing (no EXIF, AI-typical resolution, uniform ELA) | Facebook-resized 768x768 JPEG with stripped metadata |
Verdict scale
- AI-GENERATED — Definitive metadata proof found
- LIKELY AI-GENERATED — 3+ strong forensic anomalies
- POSSIBLY AI-GENERATED — 1-2 strong anomalies
- INCONCLUSIVE — Only weak/ambiguous indicators
- LIKELY AUTHENTIC — Minimal indicators, consistent with normal processing
- NO INDICATORS — Clean across all analyses
Limitations
Modern AI generators (Flux, DALL-E 3, Midjourney v6+) produce images that are nearly indistinguishable from real photos at the pixel level. This tool works best when:
- Metadata is intact — SD parameters, generation prompts = definitive proof
- Images show GAN artifacts — periodic patterns in FFT = strong signal
- Images haven't been re-compressed — social media platforms strip metadata and resize to AI-typical dimensions, creating ambiguity
For ambiguous cases, visual inspection (teeth, hands, text, reflections, lighting inconsistencies) combined with these forensic tools gives the best results.
Requirements
- Python >= 3.10
- uv (for
uvxinstall method)
Dependencies (installed automatically): mcp[cli], Pillow, numpy, scipy
License
MIT
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