This paper proposes a feature-channel subset selection method for obtaining an optimal subset of features and channels of myoelectric human-machine interface applied to classify upper limb’s motions using multi-channel myoelectric signals. It employs a multi-objective genetic algorithm as a search strategy and either data separability index or classification rate as an objective function. A wide range of features in time, frequency, and time-scale domains are examined, and a modification that reduces the bias of cardinality in the separability index is evaluated. The proposed method produces a compact subset of features and channels, which results in high accuracy by linear classifiers without a need of preliminary tailor-made adjustment...
Electroencephalography (EEG) classification for mental tasks is the crucial part of the brain-comput...
Objective Using the Twente Medical Systems international B.V. (TMSi) electromyography (EMG) system, ...
This paper presents the development of a computational intelligence method based on Regularized Logi...
This paper proposes a feature-channel subset selection method for obtaining an optimal subset of fea...
Abstract – This paper presents an ongoing investigation to select optimal subset of features from se...
Real time controlling devices based on myoelectric singles (MES) is one of the challenging research ...
The novel human-computer interface (HCI) using bioelectrical signals as input is a valuable tool to ...
Accurate and computationally efficient myoelectric control strategies have been the focus of a great...
In this paper we present surface electromyographic (EMG) data collected from 16 channels on five uni...
This paper presents a novel method to enhance the performance of Independent Component Analysis (ICA...
Choosing the right features is important to optimize lower limb pattern recognition, such as in pros...
grantor: University of TorontoThe objective of this work was to find the optimal represent...
This paper proposes and evaluates the application of support vector machine (SVM) to classify upper ...
This thesis investigates selection of time domain (TD) signal features for myoelectric signal (MES)...
Electroencephalography is a non-invasive measure of the brain electrical activity generated by milli...
Electroencephalography (EEG) classification for mental tasks is the crucial part of the brain-comput...
Objective Using the Twente Medical Systems international B.V. (TMSi) electromyography (EMG) system, ...
This paper presents the development of a computational intelligence method based on Regularized Logi...
This paper proposes a feature-channel subset selection method for obtaining an optimal subset of fea...
Abstract – This paper presents an ongoing investigation to select optimal subset of features from se...
Real time controlling devices based on myoelectric singles (MES) is one of the challenging research ...
The novel human-computer interface (HCI) using bioelectrical signals as input is a valuable tool to ...
Accurate and computationally efficient myoelectric control strategies have been the focus of a great...
In this paper we present surface electromyographic (EMG) data collected from 16 channels on five uni...
This paper presents a novel method to enhance the performance of Independent Component Analysis (ICA...
Choosing the right features is important to optimize lower limb pattern recognition, such as in pros...
grantor: University of TorontoThe objective of this work was to find the optimal represent...
This paper proposes and evaluates the application of support vector machine (SVM) to classify upper ...
This thesis investigates selection of time domain (TD) signal features for myoelectric signal (MES)...
Electroencephalography is a non-invasive measure of the brain electrical activity generated by milli...
Electroencephalography (EEG) classification for mental tasks is the crucial part of the brain-comput...
Objective Using the Twente Medical Systems international B.V. (TMSi) electromyography (EMG) system, ...
This paper presents the development of a computational intelligence method based on Regularized Logi...