LFW-Beautified: A Dataset of Face Images with Beautification and Augmented Reality Filters
Pontus Hedman, Vasilios Skepetzis, Kevin Hernandez-Diaz, Josef Bigun,, Fernando Alonso-Fernandez

TL;DR
This paper introduces LFW-Beautified, a comprehensive dataset of face images with various beautification and augmented reality filters, including reversal of sunglasses effects, to study the impact of such modifications on face recognition systems.
Contribution
It provides a new dataset with diverse facial image manipulations, enabling research on the effects of filters on biometric recognition and face detection accuracy.
Findings
Filters can significantly affect face recognition performance.
Reversal networks can partially restore face recognition features.
The dataset facilitates benchmarking of recognition robustness against image manipulations.
Abstract
Selfie images enjoy huge popularity in social media. The same platforms centered around sharing this type of images offer filters to beautify them or incorporate augmented reality effects. Studies suggests that filtered images attract more views and engagement. Selfie images are also in increasing use in security applications due to mobiles becoming data hubs for many transactions. Also, video conference applications, boomed during the pandemic, include such filters. Such filters may destroy biometric features that would allow person recognition or even detection of the face itself, even if such commodity applications are not necessarily used to compromise facial systems. This could also affect subsequent investigations like crimes in social media, where automatic analysis is usually necessary given the amount of information posted in social sites or stored in devices or cloud…
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Taxonomy
TopicsFace recognition and analysis · Face Recognition and Perception · Generative Adversarial Networks and Image Synthesis
