An efficient VAD algorithm based on constant False Acceptance rate for highly noisy environments

Author(s):  
Charaf Eddine Chelloug ◽  
Atef Farrouki
Sensors ◽  
2021 ◽  
Vol 21 (5) ◽  
pp. 1568
Author(s):  
Junmo Kim ◽  
Geunbo Yang ◽  
Juhyeong Kim ◽  
Seungmin Lee ◽  
Ko Keun Kim ◽  
...  

Recently, the interest in biometric authentication based on electrocardiograms (ECGs) has increased. Nevertheless, the ECG signal of a person may vary according to factors such as the emotional or physical state, thus hindering authentication. We propose an adaptive ECG-based authentication method that performs incremental learning to identify ECG signals from a subject under a variety of measurement conditions. An incremental support vector machine (SVM) is adopted for authentication implementing incremental learning. We collected ECG signals from 11 subjects during 10 min over six days and used the data from days 1 to 5 for incremental learning, and those from day 6 for testing. The authentication results show that the proposed system consistently reduces the false acceptance rate from 6.49% to 4.39% and increases the true acceptance rate from 61.32% to 87.61% per single ECG wave after incremental learning using data from the five days. In addition, the authentication results tested using data obtained a day after the latest training show the false acceptance rate being within reliable range (3.5–5.33%) and improvement of the true acceptance rate (70.05–87.61%) over five days.


Author(s):  
Didih Rizki Chandranegara ◽  
Fauzi Dwi Setiawan Sumadi

Keystroke Dynamic Authentication used a behavior to authenticate the user and one of biometric authentication. The behavior used a typing speed a character on the keyboard and every user had a unique behavior in typing. To improve classification between user and attacker of Keystroke Dynamic Authentication in this research, we proposed a combination of MHR (Mean of Horner’s Rules) and standard deviation. The results of this research showed that our proposed method gave a high accuracy (93.872%) than the previous method (75.388% and 75.156%). This research gave an opportunity to implemented in real login system because our method gave the best results with False Acceptance Rate (FAR) is 0.113. The user can be used as a simple password and ignore a worrying about an account hacking in the system.


Author(s):  
HUBERT CARDOT ◽  
MARINETTE REVENU ◽  
BERNARD VICTORRI ◽  
MARIE-JOSÈPHE REVILLET

We are applying neural networks to the problem of handwritten signature verification. Our system is working on checks, so we can only use the static information (the image). This static information is used in three representations: geometrical parameters, outline and image. Our system is composed of several neural networks which cooperate together during the learning and decision phases. The performances in generalization, obtained with a large-scale database of 6000 signatures from real checks on random forgeries, are False Acceptance Rate (FAR)=2% and False Rejection Rate (FRR)=4%.


2011 ◽  
Vol 15 (4) ◽  
pp. 434-436 ◽  
Author(s):  
Dae Hyun Yum ◽  
Jin Seok Kim ◽  
Sung Je Hong ◽  
Pil Joong Lee

2014 ◽  
Vol 68 (4) ◽  
Author(s):  
Shigeomi Koshimizu ◽  
Atsushi Koizumi

This paper proposes a system for authentication based on seating pressure distribution, using the MT system as a new method of biometric authentication that is difficult to forge and does not inconvenience users. The main characteristic is that the only action required of the user is to sit down. Feature values were extracted based on the pressure distribution when individuals seat, and individual users were distinguished from other persons by means of the Mahalanobis-Taguchi (MT) system used in quality engineering. The result of the experiment was a False Rejection Rate of 2.2% and a False Acceptance Rate of 1.1%. 


2018 ◽  
Vol 4 (1) ◽  
pp. 23-32
Author(s):  
Arief Bramanto Wicaksono Putra ◽  
Didi Susilo Budi Utomo ◽  
M Dicky Rahmawan

Sistem biometrika merupakan teknologi pengenalan diri dengan menggunakan bagian tubuh manusia ataupun dari perilaku manusia, untuk meningkatkan efisiensi dan efektifitas dalam setia aspek kehidupan dengan mengurangi pemakaian kartu identitas dan kata sandi. Diperlukan sebuah sistem yang dapat membantu manusia untuk mengenali tipe golongan darah. pengenalan tipe golongan darah dapat dilakukan computer salah satunya dengan metode pengenalan pola dan pelatihan masing masing karakterristik golongan darah melalui citra.Percobaan pada penelitian ini membahas tentang verifikasi golongan darah manusia yang diawali dengan pengumpulan data, akusisi citra, preprocessing, ekstraksi ciri. dari sel darah manusia yang nantinya dapat membentuk suatu pola khusus dari kumpulan hasil ekstraksi ciri. Dengan menggunakan kombinasi metode euclidean distance dan correlation coefficient diperoleh pola hasil pelatihan yang menggunakan fuzzy linguistic value berada pada rentang low medium dan medium. Dengan menggunakan 20 data uji dimana setiap golongan darah terdiri dari 5 sampel, diperoleh keputusan hasil verifikasi kecocokan yang diuji dengan menggunakan metode unjuk kerja False Acceptance Rate (FAR) sebesar  dan False Rejected Rate (FRR) sebesar 45% dengan tingkat Akurasi (Acc) sebesar 83%


Biosensors ◽  
2020 ◽  
Vol 10 (9) ◽  
pp. 124
Author(s):  
Uladzislau Barayeu ◽  
Nastassya Horlava ◽  
Arno Libert ◽  
Marc Van Hulle

The risk of personal data exposure through unauthorized access has never been as imminent as today. To counter this, biometric authentication has been proposed: the use of distinctive physiological and behavioral characteristics as a form of identification and access control. One of the recent developments is electroencephalography (EEG)-based authentication. It builds on the subject-specific nature of brain responses which are difficult to recreate artificially. We propose an authentication system based on EEG signals recorded in response to a simple motor paradigm. Authentication is achieved with a novel two-stage decoder. In the first stage, EEG signal features are extracted using an inception- and a VGG-like deep learning neural network (NN) both of which we compare with principal component analysis (PCA). In the second stage, a support vector machine (SVM) is used for binary classification to authenticate the subject based on the extracted features. All decoders are trained on EEG motor-movement data recorded from 105 subjects. We achieved with the VGG-like NN-SVM decoder a false-acceptance rate (FAR) of 2.55% with an overall accuracy of 88.29%, a FAR of 3.33% with an accuracy of 87.47%, and a FAR of 2.89% with an accuracy of 90.68% for 8, 16, and 64 channels, respectively. With the Inception-like NN-SVM decoder we achieved a false-acceptance rate (FAR) of 4.08% with an overall accuracy of 87.29%, a FAR of 3.53% with an accuracy of 85.31%, and a FAR of 1.27% with an accuracy of 93.40% for 8, 16, and 64 channels, respectively. The PCA-SVM decoder achieved accuracies of 92.09%, 92.36%, and 95.64% with FARs of 2.19%, 2.17%, and 1.26% for 8, 16, and 64 channels, respectively.


Sign in / Sign up

Export Citation Format

Share Document