Forgery localization in images
Due to the increase in popularity for forgeries in images, verification of authenticity in images techniques are required. Manipulation techniques are categorized into 2 categories, information-changing techniques and information-preserving techniques. In this project, a universal feature set is...
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Format: | Final Year Project |
Language: | English |
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Nanyang Technological University
2023
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Online Access: | https://hdl.handle.net/10356/171981 |
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Institution: | Nanyang Technological University |
Language: | English |
Summary: | Due to the increase in popularity for forgeries in images, verification of authenticity in images
techniques are required. Manipulation techniques are categorized into 2 categories,
information-changing techniques and information-preserving techniques. In this project, a
universal feature set is created to detect 10 information-preserving manipulation types in regions
of image. The proposed information-preserving forgery localisation method is training a simple
supervised machine learning model with the universal feature set to identify forged regions in
post-JPEG compressed images.
Forgeries in images over the past years have been evolved to deep fakes. To combat the creation
of deep fakes, many deep fake detections have been implemented to determine the authenticity
of the image. The proposed deep fake detection method uses facial parts which are eyes, nose
and mouth as image patches to classify the entire image as ‘real’ or ‘fake’. Each facial part is
used to train a random forest classifier respectively. Late fusion is implemented to combine the
confidence scores of the predicted class for each classifier.
Simple machine learning methods have been carried out to implement image forgery detection
and deep fake detection in this paper. Experiments are conducted to retrieve the classification
accuracy in both proposed detectors. |
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