Trustworthy Media Verification Through AI Forensics & C2PA Provenance

Coach Name

Juan Juan

EU Organization

Truebees Srl (Italy)

Members

  • Giulia Boato
  • Daniele Miorandi
  • Andrea Montibeller
  • Luisa Verdoliva

US Organization

Purdue University – VIPER Lab (USA)

Members

  • Edward Delp

Project Overview

DeepShield addresses one of the most urgent digital challenges of our time: ensuring the authenticity of images in an era dominated by deepfakes, AI-generated content, and rapid social-media dissemination.

Modern generative models produce hyper-realistic images that become even harder to detect once they are compressed, resized, or filtered by platforms such as Facebook, X, and Telegram. DeepShield responds to this problem with a hybrid approach that combines:

  • AI-based deepfake detection resilient to social-media laundering,
  • C2PA-compliant provenance verification,
  • A unified trust scoring engine, and
  • Open datasets + benchmarking tools that strengthen transparency and reproducibility.

Through a strong EU–US collaboration, the project produced new datasets, algorithms, open-source tools, and platform-ready verification workflows that empower journalists,

Methods and approaches

Robust Deepfake Detection Surviving Social-Media Degradation

DeepShield developed Cantaloupe, a custom deepfake detector based on a modified ResNet50 with prototype learning.
It was trained on 160,000 images and tested on 100,000 images—both pristine and social-network-processed—and consistently exceeded 85% accuracy and recall across all classes and platforms.

C2PA Provenance Pipeline + Rule-Based Trustworthiness Scoring

The team implemented a full C2PA validation workflow to evaluate:

  • authenticity of manifests,
  • signature validity,
  • tampering evidence,
  • generative AI origins, and
  • multi-manifest history.

A transparent scoring engine translates these signals into a human-interpretable trust score, integrated into the Truebees platform.

Key Achievements

DeepShield Dataset: 100,000 images (50k diffusion, 30k GAN, 20k real), including 30,000 images shared through Facebook, X, Telegram, providing unmatched real-world conditions.

Cantaloupe detector: Accuracy & recall ≥ 0.85 across all generators and sharing modes.

C2PA verification + scoring engine: 100% coverage on test dataset; fine-grained validity classification.

Unified verification workflow integrated in the Truebees platform (AI + provenance → combined trust score).

Open Benchmarking Library: Five state-of-the-art deepfake detectors with reproducible pipelines.

ITASpoof dataset: 1M+ real & synthetic Italian voice samples (under embargo).

62 structured interviews with journalists, users, analysts, and stakeholders.

19 LinkedIn posts, 23,502 impressions, and 10 dissemination events reaching 705 people.

Impact & Results

Scientific Impact

DeepShield produced:
- Two peer-reviewed publications (ACM IH&MMSec 2025; Deepfake Forensics Workshop 2025).
- Three open datasets/libraries (DeepShield, ITASpoof, Deepfake Detectors Library).
- Novel contributions to cross-platform robustness, compression-aware detection, and multimodal forensics.

Societal Impact

The project strengthens public trust by:
- equipping journalists, citizens, and institutions with transparent verification tools;
- supporting media literacy around synthetic content;
- aligning with EU AI Act, Digital Services Act, and global provenance standards.

Economic & Industrial Impact

DeepShield provides validated components that can be integrated into:
- newsrooms,
- forensic labs,
- online platforms,
- enterprise safety systems.
The dataset and open-source library reduce R&D costs for industry.
A new early-stage researcher position was created through the programme.

EU–US Collaboration

The partnership with Purdue University delivered:
- joint datasets (image + speech),
- joint publication (IEEE Security & Privacy Magazine submission),
- a 5-month visiting-researcher exchange,
- a full-team scientific meeting in Volterra.
The collaboration will continue with new papers and research directions.

Publications and Open-Source Contributions

  • DeepShield Dataset (100k images): Zenodo link provided in report.
  • Open Benchmarking Library: GitHub – 5 deepfake detectors with reproducible pipelines.
  • ITASpoof speech dataset (to be released after embargo).
  • Two scientific publications + one joint submission to IEEE Security & Privacy Magazine.
  • C2PA provenance verification pipeline and scoring engine.
  • Demonstrations, dashboards, datasets, and architecture documentation.

Future directions

  • Extend multimodal detection (image + voice + video).
  • Expand trust-scoring framework for regulatory alignment (EU AI Act).
  • Integrate verification workflows deeper into Truebees’ commercial platform.
  • Continue research with Purdue on speech forensics and uncertainty-aware AI agents.
  • Explore new deepfake-robust detection techniques, including social-compression emulation.

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Horizon Europe – Grant Agreement number 101092887

Funded by the European Union. Views and opinions expressed are however those of the author(s) only and do not necessarily reflect those of the European Union or European Union’s Horizon Europe research and innovation programme. Neither the European Union nor the granting authority can be held responsible for them.