Data augmentation based face anti-spoofing (FAS) scheme using deep learning techniques

Author:

Lakshminarasimha Kasetty1,Ponniyin Selvan V.1

Affiliation:

1. Information and Communication Engineering Department, Anna University, Chennai, Tamilnadu

Abstract

Recent years have seen a rise in interest in face anti-spoofing (FAS) owing to the critical function it plays in protecting face recognition systems against presentation assaults (PAs). Early-stage FAS approaches relying on handmade characteristics become inaccurate when steadily realistic PAs of unique sorts emerge. Thus, face anti-spoofing algorithms are gaining increasing relevance in such setups. A very innovative method called deep learning has shown remarkable success in difficult computer vision problems. The proposed method uses deep acquisition and transfer of learning to extract characteristics from people’s faces. This is why the authors of this study recommend using the Faster RCNN classifier with a face-liveness detection approach. Two distinct components— the data augmentation module for assessing sparse information as well as the faster RCNN classifier module— make up the anti-spoofing approach. We may use any publicly accessible dataset to train our quicker RCNN classifier. We successively fused these two components and used the Android platform to create a basic face recognition app. The results of the tests demonstrate that the developed module can identify several types of face spoof assaults, such as those carried out with the use of posters, masks, or cell phones. Testing the proposed architecture both across and inside databases using three benchmarking (Idiap Replay Attack, CASIA- FASD, & 3DMAD) demonstrate its ability to deliver outcomes on par with cutting-edge techniques.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference33 articles.

1. Zhu J. , Wang A. , Wu W.H. , Zhao Z. , Xu Y. , Lei R. and Yue K. , Deep-learning-based recovery of frequency-hopping sequences for anti-jamming applications, Electronics (2023).

2. Reducing false positive rate with the help of scene change indicator in deep learning based real-time face recognition systems;Kutlugün;Multimedia Tools and Applications,2023

3. A cascade face spoofing detector based on face anti-spoofing R-CNN and improved retinex LBP;Chen;IEEE Access,2019

4. Adaptive multiple layer retinex-enabled color face enhancement for deep learning-based recognition;Giap;IEEE Access,2021

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