Title :
Multiclass Real-Time Intent Recognition of a Powered Lower Limb Prosthesis
Author :
Varol, Huseyin Atakan ; Sup, Frank ; Goldfarb, Michael
Author_Institution :
Dept. of Mech. Eng., Vanderbilt Univ., Nashville, TN, USA
fDate :
3/1/2010 12:00:00 AM
Abstract :
This paper describes a control architecture and intent recognition approach for the real-time supervisory control of a powered lower limb prosthesis. The approach infers user intent to stand, sit, or walk, by recognizing patterns in prosthesis sensor data in real time, without the need for instrumentation of the sound-side leg. Specifically, the intent recognizer utilizes time-based features extracted from frames of prosthesis signals, which are subsequently reduced to a lower dimensionality (for computational efficiency). These data are initially used to train intent models, which classify the patterns as standing, sitting, or walking. The trained models are subsequently used to infer the user´s intent in real time. In addition to describing the generalized control approach, this paper describes the implementation of this approach on a single unilateral transfemoral amputee subject and demonstrates via experiments the effectiveness of the approach. In the real-time supervisory control experiments, the intent recognizer identified all 90 activity-mode transitions, switching the underlying middle-level controllers without any perceivable delay by the user. The intent recognizer also identified six activity-mode transitions, which were not intended by the user. Due to the intentional overlapping functionality of the middle-level controllers, the incorrect classifications neither caused problems in functionality, nor were perceived by the user.
Keywords :
artificial limbs; feature extraction; gait analysis; human-robot interaction; medical control systems; pattern recognition; real-time systems; activity-mode transitions; control architecture; controllers; feature extraction; human-robot interaction; intent recognition approach; intent recognizer; multiclass real-time intent recognition; pattern recognition; powered lower limb prosthesis; prosthesis sensor data; real-time supervisory control; time-based features; unilateral transfemoral amputee; Acoustic sensors; Computational efficiency; Data mining; Feature extraction; Instruments; Leg; Legged locomotion; Pattern recognition; Prosthetics; Supervisory control; Pattern recognition; physical human–robot interaction; powered prosthesis; rehabilitation robotics; Artificial Intelligence; Artificial Limbs; Electric Impedance; Electronics, Medical; Humans; Leg; Male; Pattern Recognition, Automated; Robotics; Signal Processing, Computer-Assisted; Walking; Young Adult;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2009.2034734