Background: Active upper-limb prostheses are used to restore important hand functionalities, such as grasping. In conventional approaches, a pattern recognition system is trained over a number of static grasping gestures. However, training a classifier in a static position results in lower classification accuracy when performing dynamic motions, such as reach-to-grasp. We propose an electromyography-based learning approach that decodes the grasping intention during the reaching motion, leading to a faster and more natural response of the prosthesis. Methods and Results: Eight able-bodied subjects and four individuals with transradial amputation gave informed consent and participated in our study. All the subjects performed reach-to-grasp mo...
This thesis examines the ability of four signal parameterisation techniques to provide discriminator...
Hand amputations can dramatically affect the capabilities of a person. Machine learning is often app...
Upper limb amputation severely affects the quality of life and the activities of daily living of a p...
Abstract Background Active upper-limb prostheses are used to restore important hand functionalities,...
Humans use their hands mainly for grasping and manipulating objects, performing simple and dexterous...
During reach-to-grasp motions,the Electromyographic (EMG) activity of the arm varies depending on mo...
Predicting the grasping function during reach-to-grasp motions is essential for controlling a prosth...
Objective. Recent results have shown the potentials of neural interfaces to provide sensory feedback...
Improving the functionality of prosthetic hands with noninvasive techniques is still a challenge. Su...
BACKGROUND: Based on mainly vascular diseases and traumatic injuries, around 40,000 upper limb amput...
Understanding the neurophysiological signals underlying voluntary motor control and decoding them fo...
: The design of prosthetic controllers by means of neurophysiological signals still poses a crucial ...
Abstract-Reaching and grasping of objects in an everyday-life environment seems so simple for humans...
Objective. Understanding the neurophysiological signals underlying voluntary motor control and decod...
This thesis examines the ability of four signal parameterisation techniques to provide discriminator...
Hand amputations can dramatically affect the capabilities of a person. Machine learning is often app...
Upper limb amputation severely affects the quality of life and the activities of daily living of a p...
Abstract Background Active upper-limb prostheses are used to restore important hand functionalities,...
Humans use their hands mainly for grasping and manipulating objects, performing simple and dexterous...
During reach-to-grasp motions,the Electromyographic (EMG) activity of the arm varies depending on mo...
Predicting the grasping function during reach-to-grasp motions is essential for controlling a prosth...
Objective. Recent results have shown the potentials of neural interfaces to provide sensory feedback...
Improving the functionality of prosthetic hands with noninvasive techniques is still a challenge. Su...
BACKGROUND: Based on mainly vascular diseases and traumatic injuries, around 40,000 upper limb amput...
Understanding the neurophysiological signals underlying voluntary motor control and decoding them fo...
: The design of prosthetic controllers by means of neurophysiological signals still poses a crucial ...
Abstract-Reaching and grasping of objects in an everyday-life environment seems so simple for humans...
Objective. Understanding the neurophysiological signals underlying voluntary motor control and decod...
This thesis examines the ability of four signal parameterisation techniques to provide discriminator...
Hand amputations can dramatically affect the capabilities of a person. Machine learning is often app...
Upper limb amputation severely affects the quality of life and the activities of daily living of a p...