Gabit Tolendiyev | Dongseo University (original) (raw)

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Papers by Gabit Tolendiyev

Research paper thumbnail of Real-Time Access Control System Method Using Face Recognition

Proceedings of International Conference on Smart Computing and Cyber Security

Research paper thumbnail of Adaptive Margin Based Liveness Detection for Face Recognition

Research paper thumbnail of A Margin-based Face Liveness Detection with Behavioral Confirmation

This paper presents a margin-based face liveness detection method with behavioral confirmation to... more This paper presents a margin-based face liveness detection method with behavioral confirmation to prevent spoofing attacks using deep learning techniques. The proposed method provides a possibility to prevent biometric person authentication systems from replay and printed spoofing attacks. For this work, a set of real face images and fake face images was collected and a face liveness detection model is trained on the constructed dataset. Traditional face liveness detection methods exploit the face image covering only the face regions of the human head image. However, outside of this region of interest (ROI) might include useful features such as phone edges and fingers. The proposed face liveness detection method was experimentally tested on the author’s own dataset. Collected databases are trained and experimental results show that the trained model distinguishes real face images and fake images correctly.

Research paper thumbnail of Real-Time Access Control System Method Using Face Recognition

Proceedings of International Conference on Smart Computing and Cyber Security

Research paper thumbnail of Adaptive Margin Based Liveness Detection for Face Recognition

Research paper thumbnail of A Margin-based Face Liveness Detection with Behavioral Confirmation

This paper presents a margin-based face liveness detection method with behavioral confirmation to... more This paper presents a margin-based face liveness detection method with behavioral confirmation to prevent spoofing attacks using deep learning techniques. The proposed method provides a possibility to prevent biometric person authentication systems from replay and printed spoofing attacks. For this work, a set of real face images and fake face images was collected and a face liveness detection model is trained on the constructed dataset. Traditional face liveness detection methods exploit the face image covering only the face regions of the human head image. However, outside of this region of interest (ROI) might include useful features such as phone edges and fingers. The proposed face liveness detection method was experimentally tested on the author’s own dataset. Collected databases are trained and experimental results show that the trained model distinguishes real face images and fake images correctly.

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