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A deepfake detecting chrome extension.

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TrueFace

Deepfake Detection Extension

Table of Contents

Overview

The Deepfake Detection Extension is a web browser extension designed to detect and provide real-time analysis of encountered or uploaded deepfake images. With the increasing prevalence of deepfake technology being used for misinformation and security threats, our solution aims to empower internet users with the ability to identify manipulated content.

To view the final prototype, click here: https://devfolio.co/projects/trueface-1576

Problem Statement

In today's digital landscape, deepfake technology has advanced to the point where it can create highly convincing fake images of targeted individuals. These deepfakes are not only used for spreading fake news and propaganda but also pose significant security risks, including malware attacks and identity theft. There is a pressing need for a solution that can safeguard internet users from falling victim to such scams.

Product Idea

Our solution is a web browser extension equipped with the following features:

  • Real-time Detection: Provides immediate detection of encountered/uploaded deepfakes.
  • Definable Results: Offers detailed reasoning behind each detection result, with a scale indicating the level of alteration detected.
  • Seamless Browsing: Easy-to-access and utilize, making it suitable for regular use.

Features

  • Real-time deepfake detection
  • User-friendly interface for seamless browsing experience

License

This project is licensed under the MIT License.

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A deepfake detecting chrome extension.

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  • Jupyter Notebook 69.6%
  • JavaScript 11.6%
  • HTML 10.2%
  • CSS 5.1%
  • Python 3.5%