COMPUTER VISION

Learning to Watermark in the Latent Space of Generative Models

December 18, 2025

Abstract

Existing approaches for watermarking AI-generated outputs often rely on post-hoc methods applied in pixel space, introducing computational overhead and potential visual artifacts. In this work, we explore latent space watermarking and its distillation into generative models. We introduce DistSeal, a unified approach for latent watermarking that works across both diffusion and autoregressive models. We demonstrate that post-hoc watermarking methods can be applied directly in the latent domain and that these latent watermarkers can be effectively distilled intothe generative pipeline (either into the generative model itself or into the latent decoder) enabling in-model watermarking. The resulting post-hoc latent method achieves robustness comparable to pixel-space baselines while offering better imperceptibility and a 20× speedup. Our experiments further reveal that distilling latent watermarkers outperforms distilling pixel-space ones, providing a solution that is both more efficient and more robust. Code and model will be made available at https://github.com/facebookresearch/distseal

Download the Paper

AUTHORS

Written by

Sylvestre Rebuffi

Tuan Tran

Valeriu Lacatusu

Pierre Fernandez

Tomáš Souček

Tom Sander

Hady Elsahar

Alexandre Mourachko

Publisher

arxiv

Research Topics

Computer Vision

Related Publications

May 26, 2026

HUMAN & MACHINE INTELLIGENCE

THEORY

Misalignment Between Backpropagation and the Hierarchy of Brain Responses to Images

Josephine Raugel, Max Seitzer, Marc Szafraniec, Huy V. Vo, Jérémy Rapin, Patrick Labatut, Piotr Bojanowski, Valentin Wyart, Jean Remi King

May 26, 2026

May 20, 2026

HUMAN & MACHINE INTELLIGENCE

RESEARCH

EgoBabyVLM: Benchmarking Cross-Modal Learning from Naturalistic Egocentric Video Data

Dongyan Lin, Phillip Rust, Angel Villar Corrales, Alvin W. M. Tan, Mahi Luthra, Charles-Eric Saint-James, Rashel Moritz, Sheila Krogh-Jespersen, Vanessa Stark, Surya Parimi, Jiayi Shen, Youssef Benchekroun, Yosuke Higuchi, Martin Gleize, Tom Fizycki, Nicolas Hamilakis, Manel Khentout, Sho Tsuji, Balázs Kégl, Juan Pino, Michael C. Frank, Emmanuel Dupoux

May 20, 2026

May 12, 2026

HUMAN & MACHINE INTELLIGENCE

RESEARCH

NeuralSet: A High-Performing Python Package for Neuro-AI

Jean Remi King, Corentin Bel, Linnea Evanson, Julien Gadonneix, Sophia Houhamdi, Jarod Levy, Josephine Raugel, Andrea Santos Revilla, Mingfang (Lucy) Zhang, Julie Bonnaire, Charlotte Caucheteux, Alexandre Défossez, Théo Desbordes, Pablo Diego-Simón, Shubh Khanna, Juliette Millet, Pierre Orhan, Saarang Panchavati, Antoine Ratouchniak, Alexis Thual, Teon Brooks, Katelyn Begany, Yohann Benchetrit, Marlene Careil, Hubert Jacob Banville, Stéphane d'Ascoli, Simon Dahan, Jérémy Rapin

May 12, 2026

April 14, 2026

COMPUTER VISION

ML APPLICATIONS

TransText: Transparency Aware Image-to-Video Typography Animation

Fei Zhang, Zijian Zhou, Bohao Tang, Sen He, Hang Li (BizAI), Zhe Wang, Soubhik Sanyal, Pengfei Liu, Viktar Atliha, Tao Xiang, Frost Xu, Semih Gunel

April 14, 2026

Help Us Pioneer The Future of AI

We share our open source frameworks, tools, libraries, and models for everything from research exploration to large-scale production deployment.