Manipulated Image Detector icon

Manipulated Image Detector

Predict if an image on a webpage is authentic or if it has been manipulated using a model built for this purpose.

Users56
Rating--
Reviews0
Manifest versionV3
7-day growth-4
7-day growth rate-6.67%
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Version1.0.4
ManifestV3
Size82.06MiB
Languages1English
Published
Store updated
Last crawled
English
Overview

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Right from your Chrome browser, predict if an image on a webpage is authentic or if it has been manipulated using a model built for this purpose!

The Manipulated Image Detector is a Chrome extension that utilizes an on-device model specifically designed to detect any potential manipulation or editing in an image. This model is loaded using TensorFlow.js scripts.

How to Use:

To predict the authenticity of an image from a webpage using the model, simply secondary-click (right-click) on the desired image and choose "Predict Image Authenticity" from the Context Menu. This action will activate a pop-up window displaying the "Manipulated Image Detector." The image will be promptly submitted to the detector, which will then provide a prediction regarding its authenticity. Once you launch this window, it will receive automated notifications to stay active every 25 seconds (until you close it), so it can update in real-time when a new image is uploaded to the detector.

How Does It Work:

This model is a custom convolutional neural network that was trained on 3938 authentic images and 3938 manipulated images from the CASIA2 dataset. It predicts the authenticity of an image using what it learned to be distinguishing variables between manipulated and authentic images throughout the training process.

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