Detailed Information on Publication Record
2016
HMOG: New Behavioral Biometric Features for Continuous Authentication of Smartphone Users
SITOVÁ, Zdeňka, Jaroslav ŠEDĚNKA, Qing YANG, Ge PENG, Gang ZHOU et. al.Basic information
Original name
HMOG: New Behavioral Biometric Features for Continuous Authentication of Smartphone Users
Authors
SITOVÁ, Zdeňka (203 Czech Republic, belonging to the institution), Jaroslav ŠEDĚNKA (203 Czech Republic, belonging to the institution), Qing YANG (156 China), Ge PENG (156 China), Gang ZHOU (156 China), Paolo GASTI (380 Italy) and Kiran BALAGANI (356 India)
Edition
IEEE Transactions on Information Forensics and Security, 2016, 1556-6013
Other information
Language
English
Type of outcome
Článek v odborném periodiku
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
United States of America
Confidentiality degree
není předmětem státního či obchodního tajemství
References:
Impact factor
Impact factor: 4.332
RIV identification code
RIV/00216224:14310/16:00089158
Organization unit
Faculty of Science
UT WoS
000372355200001
Keywords in English
Behavioral biometrics; HMOG; biometric key generation; continuous authentication; energy evaluation
Tags
Tags
International impact, Reviewed
Změněno: 6/4/2017 18:22, Ing. Andrea Mikešková
Abstract
V originále
We introduce hand movement, orientation, and grasp (HMOG), a set of behavioral features to continuously authenticate smartphone users. HMOG features unobtrusively capture subtle micro-movement and orientation dynamics resulting from how a user grasps, holds, and taps on the smartphone. We evaluated authentication and biometric key generation (BKG) performance of HMOG features on data collected from 100 subjects typing on a virtual keyboard. Data were collected under two conditions: 1) sitting and 2) walking. We achieved authentication equal error rates (EERs) as low as 7.16% (walking) and 10.05% (sitting) when we combined HMOG, tap, and keystroke features. We performed experiments to investigate why HMOG features perform well during walking. Our results suggest that this is due to the ability of HMOG features to capture distinctive body movements caused by walking, in addition to the hand-movement dynamics from taps. With BKG, we achieved the EERs of 15.1% using HMOG combined with taps. In comparison, BKG using tap, key hold, and swipe features had EERs between 25.7% and 34.2%. We also analyzed the energy consumption of HMOG feature extraction and computation. Our analysis shows that HMOG features extracted at a 16-Hz sensor sampling rate incurred a minor overhead of 7.9% without sacrificing authentication accuracy. Two points distinguish our work from current literature: 1) we present the results of a comprehensive evaluation of three types of features (HMOG, keystroke, and tap) and their combinations under the same experimental conditions and 2) we analyze the features from three perspectives (authentication, BKG, and energy consumption on smartphones).