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Open Deepfake Detection

Developed by prithivMLmods
A vision-language encoder model fine-tuned based on SigLIP2 for detecting whether images are fake or real
Downloads 221
Release Time : 5/18/2025

Model Overview

open-deepfake-detection is a vision-language encoder model fine-tuned based on siglip2-base-patch16-512 for binary image classification. The model is trained on the OpenDeepfake-Preview dataset to detect whether images are fake or real.

Model Features

High-Precision Detection
The model achieves 94.44% accuracy on the test set with an F1 score of 0.9444
Based on SigLIP2 Architecture
Utilizes the SigLIP2 vision-language encoder with improved semantic understanding, localization, and dense features
Binary Classification Capability
Accurately distinguishes between fake and real images

Model Capabilities

Deepfake Detection
Image Classification
Visual Authenticity Verification

Use Cases

Content Security
Deepfake Detection
Identify AI-generated or manipulated images
94.44% accuracy
Content Moderation
Synthetic Content Labeling
Label synthetic or fake visual content
Data Management
Dataset Curation
Remove synthetic samples from mixed datasets
Digital Forensics
Image Provenance Verification
Support image provenance verification and traceability
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