TY - GEN
T1 - User Behavioral Biometrics Identification on Mobile Platform using Multimodal Fusion of Keystroke and Swipe Dynamics and Recurrent Neural Network
AU - Tse, Ka Wing
AU - Hung, Kevin
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/4
Y1 - 2020/4
N2 - Concerns of mobile technology security has become an important issue in this era because of the popularity of mobile devices. Private and sensitive data such as photos, contacts, and information for e-banking services are being stored in users' mobile devices. In tradition, single-factor authentication, such as password-based authentication, is employed for identifying who is accessing the device. However, problem happened if the password is stolen. Therefore, numerous researchers have spent efforts in developing and investigating various approaches related to mobile technology security by incorporating of biometrics information. Soft biometrics, such as keystroke and swipe dynamics, and fusion of their features, have been proposed as an alternative solution to traditional biometrics, such as face, iris and voice, in authentication. This paper presents a multi-stream recurrent neural network (RNN) for user identification. Modals to temporal feature, spatial feature and swipe dynamic feature are fused for achieving improved performance with accuracy of 94.26% and F1 score of 93.19%.
AB - Concerns of mobile technology security has become an important issue in this era because of the popularity of mobile devices. Private and sensitive data such as photos, contacts, and information for e-banking services are being stored in users' mobile devices. In tradition, single-factor authentication, such as password-based authentication, is employed for identifying who is accessing the device. However, problem happened if the password is stolen. Therefore, numerous researchers have spent efforts in developing and investigating various approaches related to mobile technology security by incorporating of biometrics information. Soft biometrics, such as keystroke and swipe dynamics, and fusion of their features, have been proposed as an alternative solution to traditional biometrics, such as face, iris and voice, in authentication. This paper presents a multi-stream recurrent neural network (RNN) for user identification. Modals to temporal feature, spatial feature and swipe dynamic feature are fused for achieving improved performance with accuracy of 94.26% and F1 score of 93.19%.
KW - Security
KW - authentication
KW - behavioral biometrics
KW - fusion
KW - keystroke dynamics
KW - multiple-steam
KW - swipe dynamics
UR - http://www.scopus.com/inward/record.url?scp=85086631398&partnerID=8YFLogxK
U2 - 10.1109/ISCAIE47305.2020.9108839
DO - 10.1109/ISCAIE47305.2020.9108839
M3 - Conference contribution
AN - SCOPUS:85086631398
T3 - ISCAIE 2020 - IEEE 10th Symposium on Computer Applications and Industrial Electronics
SP - 262
EP - 267
BT - ISCAIE 2020 - IEEE 10th Symposium on Computer Applications and Industrial Electronics
T2 - 10th IEEE Symposium on Computer Applications and Industrial Electronics, ISCAIE 2020
Y2 - 18 April 2020 through 19 April 2020
ER -