2019 27th Telecommunications Forum (TELFOR) 2019
DOI: 10.1109/telfor48224.2019.8971206
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DeepFake Video Analysis using SIFT Features

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Cited by 7 publications
(6 citation statements)
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“… Guera & Delp (2019) used a recurrent neural network to detect deepfakes, this gives 96.7% of accuracy in detecting deepfakes. In the same way, Dordevic, Milivojevic & Gavrovska (2019) has used SIFT features, i.e ., brightness changes, scaling, etc ., to detect deepfakes. This gives 97.91% accuracy in detecting deepfakes DeepFaceLab.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“… Guera & Delp (2019) used a recurrent neural network to detect deepfakes, this gives 96.7% of accuracy in detecting deepfakes. In the same way, Dordevic, Milivojevic & Gavrovska (2019) has used SIFT features, i.e ., brightness changes, scaling, etc ., to detect deepfakes. This gives 97.91% accuracy in detecting deepfakes DeepFaceLab.…”
Section: Discussionmentioning
confidence: 99%
“…The Scale Invariant Feature Transform (SIFT) algorithm ( Dordevic, Milivojevic & Gavrovska, 2019 ) and eyebrow matching ( Nguyen & Derakhshani, 2020 ) are also used in deepfake detection to calculate a match error. Nirkin et al (2021) used the Dual Short Face Detector (DSFD) ( Li et al, 2019 ) method to first capture the segmentation of the face in the video.…”
Section: Methodsmentioning
confidence: 99%
“…These methods are typically deep (e.g., CNNs with multiple hidden layers to extract finer features) or shallow classifiers (e.g., Support Vector Machine (SVM) and neural networks with one layer). Some of the recent works include the use of capsule networks, where latent features are extracted using the VGG-19 network and fed into a network of 3 capsules (dynamic routing between capsules algorithm is employed to boost detection performance) [Nguyen et al 2019]; the use of optical flow fields to identify inter-frame dissimilarities/correlations and be used by CNN classifiers [Amerini et al 2019]; the extraction of biological signals hidden in videos, FakeCatcher [Ciftci and Demir 2019]; the use of the Scale-Invariant Feature Transform (SIFT) algorithm to analyze successive frames and differentiate between real and fake videos [Dordevic et al 2019]; and the detection of the lack of eye blinking in videos to exposed synthesized videos [Li et al 2018].…”
Section: Automatic Detectionmentioning
confidence: 99%
“…Furthermore, Yu et al [53] investigated the potential of GAN fingerprinting analysis for DeepFake detection. Dordevic et al [54] presented a method based on scale-invariant feature transform for DeepFake detection. Kaur et al [55] presented a sequential temporal analysis to detect face-swapped video clips using convolutional long short-term memory.…”
Section: Related Workmentioning
confidence: 99%