Title :
Online Segmentation of Human Motion for Automated Rehabilitation Exercise Analysis
Author :
Lin, Jonathan Feng-Shun ; Kulic, Dana
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
To enable automated analysis of rehabilitation movements, an approach for accurately identifying and segmenting movement repetitions is required. This paper proposes an approach for online, automated segmentation and identification of movement segments from continuous time-series data of human movement, obtained from body-mounted inertial measurement units or from motion capture data. The proposed approach uses a two-stage identification and recognition process, based on velocity features and stochastic modeling of each motion to be identified. In the first stage, motion segment candidates are identified based on a characteristic sequence of velocity features such as velocity peaks and zero velocity crossings. In the second stage, hidden Markov models are used to accurately identify segment locations from the identified candidates. The proposed approach is capable of online segmentation and identification, enabling interactive feedback in rehabilitation applications. The approach is validated on 20 healthy subjects and four rehabilitation patients performing rehabilitation movements, achieving segmentation accuracy of 87% with user specific templates and 79%-83% accuracy with user-independent templates.
Keywords :
feature extraction; gait analysis; hidden Markov models; medical signal processing; patient rehabilitation; stochastic processes; time series; automated analysis; automated rehabilitation exercise analysis; body-mounted inertial measurement; characteristic sequence; continuous time-series data; hidden Markov models; human motion; motion capture data; movement repetition identification; movement repetition segmentation; online automated segmentation; rehabilitation movements; stochastic modeling; two-stage identification; two-stage recognition; user-independent templates; velocity features; Feature extraction; hidden Markov models; motion analysis; pattern recognition;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2013.2259640