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Journal ArticleDOI

Detecting Facial Retouching Using Supervised Deep Learning

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TLDR
To detect retouching in face images, a novel supervised deep Boltzmann machine algorithm is proposed that uses facial parts to learn discriminative features to classify face images as original or retouched with high accuracy.
Abstract
Digitally altering, or retouching, face images is a common practice for images on social media, photo sharing websites, and even identification cards when the standards are not strictly enforced. This research demonstrates the effect of digital alterations on the performance of automatic face recognition, and also introduces an algorithm to classify face images as original or retouched with high accuracy. We first introduce two face image databases with unaltered and retouched images. Face recognition experiments performed on these databases show that when a retouched image is matched with its original image or an unaltered gallery image, the identification performance is considerably degraded, with a drop in matching accuracy of up to 25%. However, when images are retouched with the same style, the matching accuracy can be misleadingly high in comparison with matching original images. To detect retouching in face images, a novel supervised deep Boltzmann machine algorithm is proposed. It uses facial parts to learn discriminative features to classify face images as original or retouched. The proposed approach for classifying images as original or retouched yields an accuracy of over 87% on the data sets introduced in this paper and over 99% on three other makeup data sets used by previous researchers. This is a substantial increase in accuracy over the previous state-of-the-art algorithm, which has shown <50% accuracy in classifying original and retouched images from the ND-IIITD retouched faces database.

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Citations
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Journal ArticleDOI

DeepFakes and Beyond: A Survey of Face Manipulation and Fake Detection

TL;DR: This survey provides a thorough review of techniques for manipulating face images including DeepFake methods, and methods to detect such manipulations, with special attention to the latest generation of DeepFakes.
Posted Content

FaceForensics: A Large-scale Video Dataset for Forgery Detection in Human Faces

TL;DR: A novel face manipulation dataset of about half a million edited images (from over 1000 videos) is introduced, which exceeds all existing video manipulation datasets by at least an order of magnitude and introduces benchmarks for classical image forensic tasks, including classification and segmentation.
Proceedings ArticleDOI

Exploiting Spatial Structure for Localizing Manipulated Image Regions

TL;DR: A high confidence detection framework which can localize manipulated regions in an image by learning the boundary discrepancy between manipulated and non-manipulated regions with the combination of LSTM and convolution layers.
Proceedings ArticleDOI

Face recognition based on convolutional neural network

TL;DR: A modified Convolutional Neural Network (CNN) architecture by adding two normalization operations to two of the layers by improving the face recognition performance with better recognition results is proposed.
Journal ArticleDOI

Prediction of daily global solar radiation using different machine learning algorithms: Evaluation and comparison

TL;DR: All machine learning algorithms tested in this study can be used in the prediction of daily global solar radiation data with a high accuracy; however, the ANN algorithm is the best fitting algorithm among all algorithms.
References
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Proceedings ArticleDOI

Classification using discriminative restricted Boltzmann machines

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Proceedings ArticleDOI

The magic passport

TL;DR: Once upon a time there was a criminal; he was reading his e-mail when a banner caught his attention: low cost flights for the destination of his dreams, but he suddenly realized that, being wanted by the police, he could not use his passport without being arrested.
Journal ArticleDOI

Plastic Surgery: A New Dimension to Face Recognition

TL;DR: The results on the plastic surgery database suggest that it is an arduous research challenge and the current state-of-art face recognition algorithms are unable to provide acceptable levels of identification performance, so that future face recognition systems will be able to address this important problem.
BookDOI

Handbook of Biometric Anti-Spoofing: Trusted Biometrics under Spoofing Attacks

TL;DR: This Handbook of Biometric Anti-Spoofing reviews the state of the art in covert attacks against biometric systems and in deriving countermeasures to these attacks.
Book ChapterDOI

Assessment of time dependency in face recognition: an initial study

TL;DR: Experimental results suggest that face recognition performance is substantially poorer when unknown images are acquired on a different day from the enrolled images, and degradation in performance does not follow a simple predictable pattern with time between known and unknown image acquisition.
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