Deepfake detection using deep feature stacking and meta-learning
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https://hdl.handle.net/10037/34788Date
2024-02-15Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Deepfake is a type of face manipulation technique using deep learning that allows for the
replacement of faces in videos in a very realistic way. While this technology has many practical
uses, if used maliciously, it can have a significant number of bad impacts on society, such as
spreading fake news or cyberbullying. Therefore, the ability to detect deepfake has become
a pressing need. This paper aims to address the problem of deepfake detection by identifying
deepfake forgeries in video sequences. In this paper, a solution to the said problem is presented,
which at first uses a stacking based ensemble approach, where features obtained from two popular
deep learning models, namely Xception and EfficientNet-B7, are combined. Then by selecting
a near-optimal subset of features using a ranking based approach, the final classification is
performed to classify real and fake videos using a meta-learner, called multi-layer perceptron.
In our experimentation, we have achieved an accuracy of 96.33% on Celeb-DF (V2) dataset and
98.00% on the FaceForensics++ dataset using the meta-learning model both of which are higher
than the individual base models. Various types of experiments have been conducted to validate
the robustness of the current method.
Publisher
ElsevierCitation
Naskar, Mohiuddin, Malakar, Cuevas, Sarkar. Deepfake detection using deep feature stacking and meta-learning. Heliyon. 2024;10(4)Metadata
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