Bodyprint: Biometric User Identification on Mobile Devices Using the Capacitive Touchscreen to Scan Body Parts

Recent mobile phones integrate fingerprint scanners to authenticate users biometrically and replace passwords, making authentication more convenient for users. However, due to their cost, capacitive fingerprint scanners have been limited to top-of-the-line phones, a result of the required resolution and quality of the sensor. We present Bodyprint, a biometric authentication system that detects users' biometric features using the same type of capacitive sensing, but uses the touchscreen as the image sensor instead. While the input resolution of a touchscreen is ~6 dpi, the surface area is larger, allowing the touch sensor to scan users' body parts, such as ears, fingers, fists, and palms by pressing them against the display. Bodyprint compensates for the low input resolution with an increased false rejection rate, but does not compromise on authentication precision: In our evaluation with 12 participants, Bodyprint classified body parts with 99.98% accuracy and identifies users with 99.52% accuracy with a retry likelihood of 26.82% to prevent false positives, thereby bringing reliable biometric user authentication to a vast number of commodity devices.

[1]  Tadayoshi Kohno,et al.  A comprehensive study of frequency, interference, and training of multiple graphical passwords , 2009, CHI.

[2]  Binoy Pinto,et al.  Speeded Up Robust Features , 2011 .

[3]  Yanggon Kim,et al.  Pupil and Iris Localization for Iris Recognition in Mobile Phones , 2006, Seventh ACIS International Conference on Software Engineering, Artificial Intelligence, Networking, and Parallel/Distributed Computing (SNPD'06).

[4]  Stanislav Kurkovsky,et al.  Digital natives and mobile phones: A survey of practices and attitudes about privacy and security , 2010, 2010 IEEE International Symposium on Technology and Society.

[5]  Robert Biddle,et al.  Graphical passwords: Learning from the first twelve years , 2012, CSUR.

[6]  Luc Van Gool,et al.  Speeded-Up Robust Features (SURF) , 2008, Comput. Vis. Image Underst..

[7]  Patrick Baudisch,et al.  Fiberio: a touchscreen that senses fingerprints , 2013, UIST.

[8]  Xiang-Yang Li,et al.  SilentSense: silent user identification via touch and movement behavioral biometrics , 2013, MobiCom.

[9]  Ivan Poupyrev,et al.  Capacitive fingerprinting: exploring user differentiation by sensing electrical properties of the human body , 2012, UIST '12.

[10]  Patrick Baudisch,et al.  The generalized perceived input point model and how to double touch accuracy by extracting fingerprints , 2010, CHI.

[11]  Patrick Baudisch,et al.  Bootstrapper: recognizing tabletop users by their shoes , 2012, CHI.

[12]  NappiMichele,et al.  2D and 3D face recognition , 2007 .

[13]  M. Burge,et al.  Ear Biometrics , 1998 .

[14]  Sebastian Möller,et al.  On the need for different security methods on mobile phones , 2011, Mobile HCI.

[15]  Andrea F. Abate,et al.  2D and 3D face recognition: A survey , 2007, Pattern Recognit. Lett..

[16]  Sebastian Möller,et al.  Poster: An Improved Approach to Gesture-Based Authentication for Mobile Devices , 2010 .