Remove AI Watermarks Tool that removes both visible and invisible AI watermarks from images generated by models like Google Gemini, ChatGPT, and Midjourney. It strips metadata such as SynthID, C2PA credentials, and EXIF labels, and offers features like batch processing and an "Analog Humanizer" to bypass AI image classifiers. The tool is available as a command-line interface or through a free web service at raiw.cc. Remove visible and invisible AI watermarks from images generated by Google Gemini Nano Banana , ChatGPT / DALL-E, Stable Diffusion, Adobe Firefly, Midjourney, and other AI models. Strips SynthID, C2PA Content Credentials, EXIF/XMP "Made with AI" labels, and visible sparkle overlays — all in one command. Visible watermark removal — Gemini / Nano Banana sparkle logo via reverse alpha blending fast, offline, deterministic Invisible watermark removal — SynthID, StableSignature, TreeRing via diffusion-based regeneration AI metadata stripping — EXIF, PNG text chunks, C2PA provenance manifests PNG / JPEG / AVIF / HEIF / JPEG-XL , XMP DigitalSourceType "Made with AI" label removal — removes the metadata that triggers AI labels on Instagram, Facebook, X Twitter Analog Humanizer — film grain and chromatic aberration to bypass AI image classifiers Smart Face Protection — automatic extraction and blending of human faces to prevent AI distortion Batch processing — process entire directories Detection — three-stage NCC watermark detection with confidence scoring Try it online— don't want to install anything? Use raiw.cc , a free web service powered by this library. | Before Watermarked | After Cleaned | |---|---| | AI model | Visible watermark | Invisible watermark | Metadata | Our approach | |---|---|---|---|---| Google Gemini / Nano Banana / Gemini 3 Pro | ✅ Sparkle logo | ✅ SynthID v1 + v2 default SDXL pipeline at native ~1024 px | ✅ C2PA + EXIF | Alpha reversal + diffusion + metadata strip | OpenAI DALL-E 3 / ChatGPT | — | — | ✅ C2PA manifest | Metadata strip | OpenAI ChatGPT Images 2.0 gpt-image-2 | — | ✅ C2PA manifest verified | Diffusion regeneration + metadata strip | | Stable Diffusion AUTOMATIC1111, ComfyUI | — | ✅ DWT / steganographic | ✅ PNG text chunks | Diffusion regeneration + metadata strip | Adobe Firefly | — | — | ✅ Content Credentials C2PA | Metadata strip | Midjourney | — | — | ✅ EXIF + XMP prompt, model, seed | Metadata strip | StableSignature Meta | — | ✅ In-model watermark | — | Diffusion regeneration | TreeRing | — | ✅ Latent space watermark | — | Diffusion regeneration | Visible watermarks logo overlays are currently used only by Google Gemini / Nano Banana. Other services rely on invisible watermarks and/or metadata. Our diffusion-based regeneration works against any invisible watermark in pixel or frequency domain. Google Gemini internally codenamed Nano Banana adds a visible sparkle logo to generated images using alpha blending: watermarked = α × logo + 1 − α × original We reverse this with a known alpha map extracted from Gemini / Nano Banana output on a pure-black background : original = watermarked − α × logo / 1 − α A three-stage NCC Normalized Cross-Correlation detector finds the watermark position and scale dynamically, so it works even if the image was resized or cropped. After removal, residual sparkle-edge artifacts are cleaned via gradient-masked inpainting. Speed : ~0.05s per image. No GPU needed. Google embeds SynthID into every image generated by Gemini / Nano Banana. Other AI services use StableSignature, TreeRing, and similar schemes. These imperceptible frequency-domain patterns survive cropping, resizing, and JPEG compression. The removal pipeline default profile, SDXL : image → resize to ~1024px SDXL native → encode to latent space VAE → add controlled noise forward diffusion → denoise reverse diffusion, ~50 steps at strength 0.05 → decode back to pixels VAE → upscale to original resolution SDXL is the default since May 2026: empirically defeats SynthID v2 on Gemini 3 Pro outputs, where the older SD-1.5 pipeline at 768 px did not. The SD-1.5 path was removed once it was verified not to handle v2. Face Protection : before diffusion, YOLO detects people in the image and extracts them. After diffusion, the original faces are blended back with a soft elliptical mask to prevent AI distortion of facial features. Analog Humanizer : optional film grain and chromatic aberration injection that makes the output indistinguishable from a photo of a screen, defeating AI-generated image classifiers. AI tools embed generation metadata that social platforms use to show "Made with AI" labels: EXIF tags — prompt, seed, model hash, sampler settings Stable Diffusion, Midjourney XMP DigitalSourceType — trainedAlgorithmicMedia tag used by Instagram, Facebook, and X Twitter to show "Made with AI" PNG text chunks — ComfyUI workflows, AUTOMATIC1111 parameters C2PA Content Credentials — cryptographic provenance manifests from Google Imagen, OpenAI DALL-E, Adobe Firefly The cleaner parses each layer, removes AI-related fields, and preserves standard metadata Author, Copyright, Title . Install as an isolated CLI tool — no need to manage virtual environments: Using pipx https://pipx.pypa.io pipx install git+https://github.com/wiltodelta/remove-ai-watermarks.git Or using uv https://docs.astral.sh/uv uv tool install git+https://github.com/wiltodelta/remove-ai-watermarks.git To update to the latest version: pipx upgrade remove-ai-watermarks or uv tool upgrade remove-ai-watermarks Prerequisites: Python 3.10+ and pip or uv https://docs.astral.sh/uv/ . 1. Clone the repository git clone https://github.com/wiltodelta/remove-ai-watermarks.git cd remove-ai-watermarks 2. Install the package in editable mode pip install -e . Or, if you use uv: uv pip install -e . After installation the remove-ai-watermarks command is available system-wide. Note: The base install covers visible watermark removal and metadata stripping. For invisible watermark removal SynthID etc. , install GPU dependencies: pip install -e ". gpu " or: uv pip install -e ". gpu " Invisible removal uses diffusion models and a GPU for reasonable speed. On first run, the model ~2 GB will be downloaded automatically. Device is auto-detected: CUDA Linux/Windows MPS macOS CPU. To force a device: --device cuda / --device mps / --device cpu Optional: set a HuggingFace token for gated/private models cp .env.example .env Edit .env and set HF TOKEN=hf your token here Install with dev dependencies pytest, ruff, pyright pip install -e ". dev " Or with uv: uv pip install -e ". dev " Run tests pytest Run linters ./maintain.sh Remove all watermarks from a single image visible + invisible + metadata remove-ai-watermarks all image.png -o clean.png Process an entire directory remove-ai-watermarks batch ./images/ --mode all Visible watermark only Gemini / Nano Banana sparkle — fast, offline remove-ai-watermarks visible image.png -o clean.png Invisible watermark only SynthID etc. — requires GPU remove-ai-watermarks invisible image.png -o clean.png --humanize 4.0 Check / strip AI metadata C2PA, EXIF, "Made with AI" labels remove-ai-watermarks metadata image.png --check remove-ai-watermarks metadata image.png --remove Batch with a specific mode remove-ai-watermarks batch ./images/ --mode visible python from remove ai watermarks.gemini engine import GeminiEngine import cv2 engine = GeminiEngine image = cv2.imread "watermarked.png" Detect result = engine.detect watermark image print f"Detected: {result.detected} confidence: {result.confidence:.1%} " Remove clean = engine.remove watermark image cv2.imwrite "clean.png", clean python from remove ai watermarks.metadata import has ai metadata, remove ai metadata from pathlib import Path if has ai metadata Path "image.png" : remove ai metadata Path "image.png" , Path "clean.png" - Python ≥ 3.10 Visible removal / metadata : CPU only, no GPU required Invisible removal : GPU recommended CUDA or MPS , works on CPU slow SSL certificate error CERTIFICATE VERIFY FAILED : Install certifi the tool auto-detects it pip install certifi macOS only: run the Python certificate installer /Applications/Python\ 3. /Install\ Certificates.command First run is slow — this is expected. The tool downloads model weights ~2 GB on first launch. Subsequent runs use cached models. noai-watermark https://github.com/mertizci/noai-watermark by mertizci — invisible watermark removal engine GeminiWatermarkTool https://github.com/allenk/GeminiWatermarkTool by Allen Kuo MIT — visible watermark removal algorithm CtrlRegen https://github.com/yepengliu/CtrlRegen by Liu et al. ICLR 2025 — controllable regeneration pipeline- NeuralBleach MIT — analog humanizer technique Tracked but not yet implemented: SynthID-Image v2 automated regression test . The default SDXL profile defeats v2 per manual checks against the Gemini app https://support.google.com/gemini/answer/16722517 's "Verify with SynthID" feature on a Gemini 3 Pro output May 2026 . An automated end-to-end test would need either programmatic access to the SynthID Detector portal https://blog.google/innovation-and-ai/products/google-synthid-ai-content-detector/ waitlist for media professionals and researchers or an offline surrogate detector. Open. AVIF / HEIF / JPEG-XL detection limits . Removal strips top-level C2PA uuid and JUMBF jumb boxes. EXIF/XMP boxes inside these containers are not yet scrubbed PNG and JPEG are fully covered . Video pipeline : per-frame inpainting and tracking for Sora 2 dynamic logo, Veo 3.1 badge, Kling, Runway. Separate package, not folded into this repo. noai-video Won't fix: Nightshade / Glaze / PhotoGuard removal . These are defensive perturbations used by artists to protect their work from being scraped into AI training sets. Removing them attacks artists, not AI provenance. Out of scope. Watermarking and provenance for AI-generated content is now regulated in several jurisdictions. The table below summarises the May 2026 status. None of this is legal advice. | Jurisdiction | Instrument | Status May 2026 | Relevance | |---|---|---|---| | EU | AI Act, Article 50 2 | Marking obligations postponed to 2 December 2026 under the December 2025 omnibus agreement. Code of Practice finalising May/June 2026. | Removing mandated provenance markers with intent to deceive may be sanctioned under national implementations. | | US federal | COPIED Act | Enacted 2025. | Criminalises removal of provenance information with intent to deceive about content origin. The tool itself is lawful; usage may not be. | | US state | CA AB 2655, TX SB 751, similar | In force. | Content-specific election deepfakes, sexual deepfakes . Not tool-specific. | | China | Deep Synthesis Regulation, 2025 updates | In force. | Mandatory visible label for AI content. Removal is an administrative offence. | | UK | Online Safety Act, 2025 transparency extension | In force. | Platform obligations, not user obligations. | This tool defends already-distributed AI imagery against automatic detection systems social-platform "Made with AI" labels, third-party classifiers, content-policy filters . It does not retroactively anonymise generation. In particular, SynthID-Image v2 Google, deployed October 2025 with Gemini 3 Pro / Nano Banana Pro / Imagen 4 / Veo embeds a 136-bit payload arxiv 2510.09263 https://arxiv.org/abs/2510.09263 . The payload is believed to encode a user / session identifier. If the original watermarked file ever passed through a system controlled by the prompt originator a saved Gemini account history, a screenshot uploaded to a Google product, a backup , Google retains the ability to link that original to the generating account. Stripping the watermark from a copy you possess does not erase Google's server-side record. Use cases where the threat model fits: - You generated the image yourself, want to publish it as your own work, and accept the consequences if Google ever publishes their detector logs. - You are running a security / robustness evaluation. - You are preserving art or historical record against false-positive "AI-generated" labels. Use cases where the threat model does not fit: - Generating an image, expecting that removing the watermark anonymises you to Google. It doesn't. - Distributing AI-generated content while claiming human authorship. The watermark is one of several traceability layers. This tool is intended for legitimate purposes such as: - Privacy protection removing metadata that leaks user account identifiers . - Art preservation and fair-use research. - Removing false-positive "Made with AI" labels from human-edited photographs. - Security research and watermark robustness study. Removing AI provenance markers to misrepresent AI-generated content as human-created may violate the laws above, the DMCA, and platform terms of service. Users are solely responsible for ensuring their use complies with all applicable laws. The authors do not condone use of this tool for deception, fraud, or any activity that violates applicable laws or regulations. MIT