Gait signals detectable by sensors on ubiquitous personal devices such as smartphones can reveal characteristics unique to each individual, and thereby offer a new approach to recognizing users. Conventional pattern matching approaches use inner-product based distance measures which are not robust to common variations in time-series analysis (e.g., shifts and stretching). This is unfortunate given that it is well understood that capturing such variations is paramount for model performance. This work shows how machine learning methods which encode gait signals into a feature space based on a dictionary can use convolution and Dynamic Time Warping (DTW) similarity measures to improve classification accuracy in a variety of situations common to gait recognition. We also show that data augmentation is crucial in gait recognition, as diverse training data in practical applications is very limited. We validate the effectiveness of these methods empirically, and demonstrate the identification of user gait patterns where shift and stretch variations in measurements are substantial. We present a new gait dataset that contains a complete representation of the variations that can be expected in real-world recognition scenarios. We compare our techniques against the current state of the art gait period detection and normalization schemes on our dataset and show improved classification accuracy under all experimental scenarios.
[1]
Shie Mannor,et al.
A novel similarity measure for time series data with applications to gait and activity recognition
,
2010,
UbiComp '10 Adjunct.
[2]
Yasushi Makihara,et al.
The largest inertial sensor-based gait database and performance evaluation of gait-based personal authentication
,
2014,
Pattern Recognit..
[3]
Liu Ming,et al.
A Wearable Acceleration Sensor System for Gait Recognition
,
2007,
2007 2nd IEEE Conference on Industrial Electronics and Applications.
[4]
Marios Savvides,et al.
Gait-ID on the move: Pace independent human identification using cell phone accelerometer dynamics
,
2012,
2012 IEEE Fifth International Conference on Biometrics: Theory, Applications and Systems (BTAS).
[5]
Kôiti Hasida,et al.
Rotation invariant feature extraction from 3-D acceleration signals
,
2011,
2011 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).
[6]
James J. Little,et al.
Biometric Gait Recognition
,
2003,
Advanced Studies in Biometrics.
[7]
Hiroaki Sakoe,et al.
A Dynamic Programming Approach to Continuous Speech Recognition
,
1971
.
[8]
Einar Snekkenes,et al.
Gait Authentication and Identification Using Wearable Accelerometer Sensor
,
2007,
2007 IEEE Workshop on Automatic Identification Advanced Technologies.