FACE SPOOFING DETECTION BASED ON DEEP FEATURE EXTRACTION AND INSTANCE-BASED CLASSIFICATION

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Author listClaypo, Niphat; Jaiyen, Saichon; Hanskunatai, Anantaporn;

PublisherICIC International

Publication year2023

Volume number17

Issue number2

Start page235

End page244

Number of pages10

ISSN1881-803X

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85147512815&doi=10.24507%2ficicel.17.02.235&partnerID=40&md5=c27af18dafaf4f82652b8ea8f0126b55

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

Face recognition is an important task in smart home security for detecting a face or monitoring a person in a live video and verifying the identity of an authentic user. However, there have been spoofing face methods that can trick a face recognition algorithm into wrongly verifying the identity of the person. In this paper, we propose a new hybrid framework for spoofing face detection based on Convolutional Neural Network and Long Short-Term Memory (CNNLSTM) and instance-based learning algorithm. In addition, a new dataset called FSA-CCTV is proposed, which contains face images from CCTV video clips with many types of spoofing attacks. The performance of our method was compared to several other anti-spoofing methods: CNN and RI-LBP, SLRNN, HSV+YCbCr, ResNet50, YCbCr+SVM and YCbCr+KNN. The experimental results show that our method yielded 93.2% of Accuracy, 96.8% of Recall, 94% of Precision, 94.8% of F1-score and 0.93 of AUC on the FSA-CCTV dataset. From the experimental results we can conclude that the proposed algorithm outperforms other approaches and yielded the most stable classification accuracy on the proposed dataset. ©2023 ICIC International.


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Last updated on 2024-27-02 at 23:05