When Sketch Face Recognition Meets Mask Obfuscation: Database and Benchmark | IEEE Conference Publication | IEEE Xplore

When Sketch Face Recognition Meets Mask Obfuscation: Database and Benchmark


Abstract:

During this unprecedented time of the COVID19 pandemic, wearing face masks has become a necessity. While these masks aim to secure an individual from getting infected by ...Show More

Abstract:

During this unprecedented time of the COVID19 pandemic, wearing face masks has become a necessity. While these masks aim to secure an individual from getting infected by any kind of viruses including COVID-19; they significantly obfuscate the identity. The situation becomes even worse when an attacker performs a crime and the place does not have any surveillance cameras. The identification of criminals in such conditions highly depends on the witnesses and generation of sketches based on their description. To the best of our knowledge, in the literature, no work has been performed for matching sketch images with masks. In this research, we have first created the mask sketch face database using more than 50 identities. The sketch images are generated using a different variant of pencils, which can be seen as different sketch artists. The recognition experiments are performed using state-of-the-art face embedding networks including ArcFace and DeepID which show that the recognition performance degrades significantly when the sketch mask images are used for identification. In another set of experiments, it is observed that the recognition algorithm is robust in handling the digital face mask images. However, the ineffectiveness in handling the variations that occurred due to sketches is a serious concern and needs attention.
Date of Conference: 15-18 December 2021
Date Added to IEEE Xplore: 12 January 2022
ISBN Information:
Conference Location: Jodhpur, India

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