Reducing the size of feature vectors in physio-
logical computing applications could confer numer-
ous benefits to application developers. Smaller fea-
ture vectors could enable quick, cloud-based process-
ing, reducing the computational load on the end-user
hardware. Small feature vectors also lower the bound-
aries to achieving continuous, pervasive recording.
By quantizing signals from physiological sensors, de-
velopers can collect large corpa of biometric data
without expensive, high-performance server configu-
rations, enabling large-scale observations on physio-
logical data.
ACKNOWLEDGEMENTS
This research was supported in part by the Na-
tional Science Foundation under award CCF-0424422
(TRUST) and the Swiss National Science Foundation
under award PA00P2-145368
REFERENCES
Ball, T., Kern, M., Mutschler, I., Aertsen, A., and Schulze-
Bonhage, A. (2009). Signal quality of simultaneously
recorded invasive and non-invasive eeg. Neuroimage,
46(3):708–716.
Blankertz, B., Krauledat, M., Dornhege, G., Williamson, J.,
Murray-Smith, R., and Mller, K.-R. (2007). A note on
brain actuated spelling with the berlin brain-computer
interface. In Stephanidis, C., editor, Universal Ac-
cess in Human-Computer Interaction. Ambient Inter-
action, number 4555 in Lecture Notes in Computer
Science, pages 759–768. Springer Berlin Heidelberg.
Burges, C. (1998). A tutorial on support vector machines
for pattern recognition. Data Mining and Knowledge
Discovery, 2(2):121–167.
Campbell, A., Choudhury, T., Hu, S., Lu, H., Mukerjee,
M. K., Rabbi, M., and Raizada, R. D. (2010). Neuro-
Phone: brain-mobile phone interface using a wireless
EEG headset. In Proceedings of the second ACM SIG-
COMM workshop on Networking, systems, and appli-
cations on mobile handhelds, page 38. ACM.
Carrino, F., Dumoulin, J., Mugellini, E., Khaled, O., and
Ingold, R. (2012). A self-paced BCI system to control
an electric wheelchair: Evaluation of a commercial,
low-cost EEG device. In Biosignals and Biorobotics
Conference (BRC), 2012 ISSNIP, pages 1–6.
Chuang, J., Nguyen, H., Wang, C., and Johnson, B. (2013).
I think, therefore i am: Usability and security of au-
thentication using brainwaves. In Adams, A., Brenner,
M., and Smith, M., editors, Financial Cryptography
and Data Security, volume 7862 of Lecture Notes in
Computer Science, pages 1–16. Springer Berlin Hei-
delberg.
Crowley, K., Sliney, A., Pitt, I., and Murphy, D. (2010).
Evaluating a brain-computer interface to categorise
human emotional response. In ICALT, page 276278.
D. Mattia, F. Pichiorri, M. M. R. R. (2011). Brain com-
puter interface for hand motor function restoration and
rehabilitation. In Towards Practical Brain Computer
Interfaces. Springer, Biological and Medical Physics,
Biomedical Engineering.
De Vos, M. and Debener, S. (2014). Mobile eeg: towards
brain activity monitoring during natural action and
cognition. International journal of psychophysiology:
official journal of the International Organization of
Psychophysiology, 91(1):1–2.
Dornhege, G. (2007). Toward Brain-computer Interfacing.
MIT Press.
Fan, R.-E., Chang, K.-W., Hsieh, C.-J., Wang, X.-R., and
Lin, C.-J. (2008). LIBLINEAR: a library for large lin-
ear classification. J. Mach. Learn. Res., 9:18711874.
Friedrich, E. V., Neuper, C., and Scherer, R. (2013). What-
ever works: A systematic user-centered training pro-
tocol to optimize brain-computer interfacing individ-
ually. PloS one, 8(9):e76214.
Garrett, D., Peterson, D., Anderson, C., and Thaut, M.
(2003). Comparison of linear, nonlinear, and feature
selection methods for eeg signal classification. IEEE
Transactions on Neural Systems and Rehabilitation
Engineering, 11(2):141–144.
Grierson, M. and Kiefer, C. (2011). Better brain interfacing
for the masses: progress in event-related potential de-
tection using commercial brain computer interfaces.
page 1681. ACM Press.
Hill, N. J., Ricci, E., Haider, S., McCane, L. M., Heck-
man, S., Wolpaw, J. R., and Vaughan, T. M. (2014). A
practical, intuitive braincomputer interface for com-
municating yes or no by listening. Journal of Neural
Engineering, 11(3):035003.
Jain, A. K., Duin, R. P. W., and Mao, J. (2000). Statis-
tical pattern recognition: A review. Pattern Analy-
sis and Machine Intelligence, IEEE Transactions on,
22(1):437.
Johnson, B., Maillart, T., and Chuang, J. (2014). My
thoughts are not your thoughts. In Proceedings of the
2014 ACM International Joint Conference on Perva-
sive and Ubiquitous Computing: Adjunct Publication,
UbiComp ’14 Adjunct, pages 1329–1338, New York,
NY, USA. ACM.
Larsen, E. A. and Hokl, C.-s. J. (2011). Classification of
EEG Signals in a Brain- Computer Interface System.
Lotte, F., Congedo, M., Lcuyer, A., Lamarche, F., Arnaldi,
B., et al. (2007). A review of classification algorithms
for EEG-based braincomputer interfaces. Journal of
neural engineering, 4.
McFarland, D. J. and Wolpaw, J. R. (2011). Brain-computer
interfaces for communication and control. Commun
ACM, 54(5):60–66.
Millan, J. D. R., Rupp, R., Muller-Putz, G. R., Murray-
Smith, R., Giugliemma, C., Tangermann, M., Vidau-
rre, C., Cincotti, F., Kubler, A., Leeb, R., Neuper,
C., Muller, K.-R., and Mattia, D. (2010). Combining
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