The aim of this work is the evaluation of Distributed Classifier for the detection of gait phases that can be implemented in an active knee orthosis for the recovery of locomotion of pediatric subjects with neurological diseases, such as Cerebral Palsy (CP). The classifier is based on a Hierarchical Weighted Decision applied to the outputs of two or more scalar Hidden Markov Models (HMMs) trained by linear accelerations and angular velocities measured at shank and thigh. The kinematics of the dominant lower limb of ten healthy subjects were acquired by means of linear accelerometers and gyroscopes embedded in two inertial sensors. The actual sequence of gait phases was captured by means of foot switches. The experimental procedure consisted...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
In this work, we develop a novel gait phase detection algorithm based on a hidden Markov model, whic...
In this work, we develop a novel gait phase detection algorithm based on a hidden Markov model, whic...
In this work, we decided to apply a hierarchical weighted decision, proposed and used in other resea...
In this work, we decided to apply a hierarchical weighted decision, proposed and used in other resea...
Gait-phase recognition is a necessary functionality to drive robotic rehabilitation devices for lowe...
Gait-phase recognition is a necessary functionality to drive robotic rehabilitation devices for lowe...
Gait-phase recognition is a necessary functionality to drive robotic rehabilitation devices for lowe...
In this paper we present and validate a methodology to avoid the training procedure of a classifier ...
Due to the recent rise in the use of lower-limb exoskeletons as an alternative for gait rehabilitati...
Abstract Background Functionality and versatility of microprocessor-controlled stance-control knee-a...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
In this work, we develop a novel gait phase detection algorithm based on a hidden Markov model, whic...
In this work, we develop a novel gait phase detection algorithm based on a hidden Markov model, whic...
In this work, we decided to apply a hierarchical weighted decision, proposed and used in other resea...
In this work, we decided to apply a hierarchical weighted decision, proposed and used in other resea...
Gait-phase recognition is a necessary functionality to drive robotic rehabilitation devices for lowe...
Gait-phase recognition is a necessary functionality to drive robotic rehabilitation devices for lowe...
Gait-phase recognition is a necessary functionality to drive robotic rehabilitation devices for lowe...
In this paper we present and validate a methodology to avoid the training procedure of a classifier ...
Due to the recent rise in the use of lower-limb exoskeletons as an alternative for gait rehabilitati...
Abstract Background Functionality and versatility of microprocessor-controlled stance-control knee-a...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
In this work, we develop a novel gait phase detection algorithm based on a hidden Markov model, whic...
In this work, we develop a novel gait phase detection algorithm based on a hidden Markov model, whic...