Securing the Open Softphone
Undergraduate Student: Avi Klausner, Matt Schoen
Advisors: Ari Trachtenberg, David Starobinski
Recognizing Gait
Paper Abstract(draft):
We investigate whether smartphones can be used to distinguish different users based on
their gait, the rhythmical body movements of human beings as they walk. To this end, we
propose, describe, and experimentally evaluate a system that classifies peoples' gait
patterns using the tri-axial accelerometer of the Motorola Droid phone. The system
employs the wavelet transform to extract features from raw acceleration data and the k
Nearest Neighbors (kNN) algorithm to perform the classification. Preliminary experimental
results show that the system achieves high classification rates (i.e. above 90%) when
users walk at approximately constant speeds regardless of variations in environment. Our
results show promise toward using gait as a means of user recognition.
--
JiaxiJin - 05 Oct 2010