An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users

abstract: With the recent expansion in the use of wearable technology, a large number of users access personal data with these smart devices. The consumer market of wearables includes smartwatches, health and fitness bands, and gesture control armbands. These smart devices enable users to communicat...

Full description

Bibliographic Details
Other Authors: Mukherjee, Tamalika (Author)
Format: Dissertation
Language:English
Published: 2017
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.45574
id ndltd-asu.edu-item-45574
record_format oai_dc
spelling ndltd-asu.edu-item-455742018-06-22T03:08:53Z An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users abstract: With the recent expansion in the use of wearable technology, a large number of users access personal data with these smart devices. The consumer market of wearables includes smartwatches, health and fitness bands, and gesture control armbands. These smart devices enable users to communicate with each other, control other devices, relax and work out more effectively. As part of their functionality, these devices store, transmit, and/or process sensitive user personal data, perhaps biological and location data, making them an abundant source of confidential user information. Thus, prevention of unauthorized access to wearables is necessary. In fact, it is important to effectively authenticate users to prevent intentional misuse or alteration of individual data. Current authentication methods for the legitimate users of smart wearable devices utilize passcodes, and graphical pattern based locks. These methods have the following problems: (1) passcodes can be stolen or copied, (2) they depend on conscious user inputs, which can be undesirable to a user, (3) they authenticate the user only at the beginning of the usage session, and (4) they do not consider user behavior or they do not adapt to evolving user behavior. In this thesis, an approach is presented for developing software for continuous authentication of the legitimate user of a smart wearable device. With this approach, the legitimate user of a smart wearable device can be authenticated based on the user's behavioral biometrics in the form of motion gestures extracted from the embedded sensors of the smart wearable device. The continuous authentication of this approach is accomplished by adapting the authentication to user's gesture pattern changes. This approach is demonstrated by using two comprehensive datasets generated by two research groups, and it is shown that this approach achieves better performance than existing methods. Dissertation/Thesis Mukherjee, Tamalika (Author) Yau, Sik-Sang (Advisor) Ahn, Gail-Joon (Committee member) Davulcu, Hasan (Committee member) Arizona State University (Publisher) Computer science eng 87 pages Masters Thesis Software Engineering 2017 Masters Thesis http://hdl.handle.net/2286/R.I.45574 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2017
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Computer science
spellingShingle Computer science
An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users
description abstract: With the recent expansion in the use of wearable technology, a large number of users access personal data with these smart devices. The consumer market of wearables includes smartwatches, health and fitness bands, and gesture control armbands. These smart devices enable users to communicate with each other, control other devices, relax and work out more effectively. As part of their functionality, these devices store, transmit, and/or process sensitive user personal data, perhaps biological and location data, making them an abundant source of confidential user information. Thus, prevention of unauthorized access to wearables is necessary. In fact, it is important to effectively authenticate users to prevent intentional misuse or alteration of individual data. Current authentication methods for the legitimate users of smart wearable devices utilize passcodes, and graphical pattern based locks. These methods have the following problems: (1) passcodes can be stolen or copied, (2) they depend on conscious user inputs, which can be undesirable to a user, (3) they authenticate the user only at the beginning of the usage session, and (4) they do not consider user behavior or they do not adapt to evolving user behavior. In this thesis, an approach is presented for developing software for continuous authentication of the legitimate user of a smart wearable device. With this approach, the legitimate user of a smart wearable device can be authenticated based on the user's behavioral biometrics in the form of motion gestures extracted from the embedded sensors of the smart wearable device. The continuous authentication of this approach is accomplished by adapting the authentication to user's gesture pattern changes. This approach is demonstrated by using two comprehensive datasets generated by two research groups, and it is shown that this approach achieves better performance than existing methods. === Dissertation/Thesis === Masters Thesis Software Engineering 2017
author2 Mukherjee, Tamalika (Author)
author_facet Mukherjee, Tamalika (Author)
title An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users
title_short An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users
title_full An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users
title_fullStr An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users
title_full_unstemmed An Approach to Software Development for Continuous Authentication of Smart Wearable Device Users
title_sort approach to software development for continuous authentication of smart wearable device users
publishDate 2017
url http://hdl.handle.net/2286/R.I.45574
_version_ 1718701583588392960