Title :
A machine learning approach to k-step look-ahead prediction of gait variables from acceleration data
Author :
Lai, Daniel T H ; Shilton, Alistair ; Charry, Edgar ; Begg, R. ; Palaniswami, M.
Author_Institution :
Centre for Ageing, Rehabilitation, Exercise & Sport, Victoria Univ., VIC, Australia
Abstract :
This paper investigates the use of machine learning to predict a sensitive gait parameter based on acceleration information from previous gait cycles. We investigate a k-step look-ahead prediction which attempts to predict gait variable values based on acceleration information in the current gait cycle. The variable is the minimum toe clearance which has been demonstrated to be a sensitive falls risk predictor. Toe clearance data was collected under normal walking conditions and 9 features consisting of peak acceleration and their normalized occurrences times were extracted. A standard least squares estimator, a generalized regression neural network (GRNN) and a support vector regressor (SVR) were trained using 60% of the data to estimate the minimum toe clearance and the remaining 40% was used to validate the model. It was found that when the training data contained data from all subjects (inter-subject) the best GRNN model provided a root mean square error (RMSE) of 2.8 mm, the best SVR had RMSE of 2.7 mm while the standard least squares linear regression method obtained 3.3 mm. When the training and test data consisted of different subject examples (inter-subject) data, the linear SVR demonstrated superior generalization capability (RMSE=3.3 mm) compared to other competing models. Validation accuracies up to 5-step look-ahead predictions revealed robust performances for both GRNN and SVR models with no clear degradation in prediction accuracy.
Keywords :
gait analysis; learning (artificial intelligence); prediction theory; regression analysis; support vector machines; GRNN model; acceleration data; gait variables; generalized regression neural network; k-step look-ahead prediction; least squares estimator; machine learning; support vector regressor; Acceleration; Data mining; Least squares approximation; Least squares methods; Legged locomotion; Linear regression; Machine learning; Neural networks; Root mean square; Training data;
Conference_Titel :
Engineering in Medicine and Biology Society, 2009. EMBC 2009. Annual International Conference of the IEEE
Conference_Location :
Minneapolis, MN
Print_ISBN :
978-1-4244-3296-7
Electronic_ISBN :
1557-170X
DOI :
10.1109/IEMBS.2009.5334512