We present a novel computational technique intended for the robust and adaptable control of a multifunctional prosthetic hand using multichannel surface electromyography. The initial processing of the input data was oriented towards extracting relevant time domain features of the EMG signal. Following the feature calculation, a piecewise modeling of the multidimensional EMG feature dynamics using vector autoregressive models was performed. The next step included the implementation of hierarchical hidden semi-Markov models to capture transitions between piecewise segments of movements and between different movements. Lastly, inversion of the model using an approximate Bayesian inference scheme served as the classifier. The effectiveness of t...
International audienceThis paper describes a sequential decomposition algorithm for single channel i...
The paper presents a concept of hand movements recognition on the basis of EMG signal analysis. Sign...
Abstract One of the major problems when dealing with highly dexterous, active hand prostheses is the...
In this paper we present a novel method for predicting individual fingers movements from surface ele...
This paper represents an ongoing investigation of dexterous and natural control of upper extremity p...
Pattern recognition and classification algorithms are widely studied in natural gesture interfaces f...
A fundamental component of many modern prostheses is the myoelectric control system, which uses the ...
This contribution presents a novel methodology for myolectric-based control using surface electromyo...
One of the major problems when dealing with highly dexterous, active hand prostheses is their contro...
High dimensional time series data such as video sequences, spectral trajectories of a speech signal ...
Control of active hand prostheses is an open challenge. In fact, the advances in mechatronics made a...
Control of active hand prostheses is an open challenge. In fact, the advances in mechatronics made a...
The myoelectric prosthetic hand is a powerful tool developed to help people with upper limb loss res...
Electromyographic signals have been used with low-degree-of-freedom prostheses, and recently with mu...
International audienceThis paper describes a sequential decomposition algorithm for single channel i...
The paper presents a concept of hand movements recognition on the basis of EMG signal analysis. Sign...
Abstract One of the major problems when dealing with highly dexterous, active hand prostheses is the...
In this paper we present a novel method for predicting individual fingers movements from surface ele...
This paper represents an ongoing investigation of dexterous and natural control of upper extremity p...
Pattern recognition and classification algorithms are widely studied in natural gesture interfaces f...
A fundamental component of many modern prostheses is the myoelectric control system, which uses the ...
This contribution presents a novel methodology for myolectric-based control using surface electromyo...
One of the major problems when dealing with highly dexterous, active hand prostheses is their contro...
High dimensional time series data such as video sequences, spectral trajectories of a speech signal ...
Control of active hand prostheses is an open challenge. In fact, the advances in mechatronics made a...
Control of active hand prostheses is an open challenge. In fact, the advances in mechatronics made a...
The myoelectric prosthetic hand is a powerful tool developed to help people with upper limb loss res...
Electromyographic signals have been used with low-degree-of-freedom prostheses, and recently with mu...
International audienceThis paper describes a sequential decomposition algorithm for single channel i...
The paper presents a concept of hand movements recognition on the basis of EMG signal analysis. Sign...
Abstract One of the major problems when dealing with highly dexterous, active hand prostheses is the...