Multi-feature Forgery Detection Deep-Learning based Framework
-
Updated
Feb 6, 2024 - JavaScript
Multi-feature Forgery Detection Deep-Learning based Framework
Official code for CAT-Net: Compression Artifact Tracing Network. Image manipulation detection and localization.
Employing Error Level Analysis (ELA) and Edge Detection techniques, this project aims to identify potential image forgery by analyzing discrepancies in error levels and abrupt intensity changes within images.
Official implementation of the article "Unsupervised JPEG Domain Adaptation For Practical Digital Forensics"
Implementation of the famous Image Manipulation\Forgery Detector "ManTraNet" in Pytorch
Implementation of the famous Camera Noise Fingerprint "NoisePrint" in Pytorch
[ICAPR 2017] Image Hash Minimization for Tamper Detection
[CVPR 2023 Highlight] Official implementation of the paper: "AltFreezing for More General Video Face Forgery Detection"
IFAKE is an application for detecting image and video forgery, designed to help users verify the authenticity of digital media. This repository also contains the AI model and dataset that we developed for image tampering detection, providing an effective solution for detecting image and video manipulations.
[CVPR'19, ICLR'20] A Python toolbox for modeling and optimization of photo acquisition & distribution pipelines (camera ISP, compression, forensics, manipulation detection)
A Rust implementation of ZERO: a JPEG grid detector applied to forgery detection in digital images.
Forgegy Image Detection Using Error level Analysis and Deep Learning
image fraud detection(copy-move forgery)
IMDetector is a Python module for image manipulation detection.
This system is Used detect and highlight the image (Forgery) malpractices performed on modern-day digital images.
Authenticating Bob Ross Paintings using Convolutional Neural Networks
auto-encoder-based forgery detection tool for mammogram images
Groundtruth images of tampering dataset CASIA 2.0
Copy-move image forgery detection library.
Groundtruth images of tampering dataset CASIA 1.0
Add a description, image, and links to the forgery-detection topic page so that developers can more easily learn about it.
To associate your repository with the forgery-detection topic, visit your repo's landing page and select "manage topics."