AbstractIn numerous signal processing applications, non-stationary signals should be segmented to piece-wise stationary epochs before being further analyzed. In this article, an enhanced segmentation method based on fractal dimension (FD) and evolutionary algorithms (EAs) for non-stationary signals, such as electroencephalogram (EEG), magnetoencephalogram (MEG) and electromyogram (EMG), is proposed. In the proposed approach, discrete wavelet transform (DWT) decomposes the signal into orthonormal time series with different frequency bands. Then, the FD of the decomposed signal is calculated within two sliding windows. The accuracy of the segmentation method depends on these parameters of FD. In this study, four EAs are used to increase the a...
BCI (Brain Computer Interface) is a communication machine that translates brain massages to computer...
This article was developed with the particular interest of characterize and study EEG signals as a p...
In this paper, we present an approach to estimate fractal complexity of discrete time signal wavefor...
In numerous signal processing applications, non-stationary signals should be segmented to piece-wise...
In numerous signal processing applications, non-stationary signals should be segmented to piece-wise...
In numerous signal processing applications, non-stationary signals should be segmented to piece-wise...
Electroencephalogram (EEG) is generally known as a non-stationary signal. Dividing a signal into the...
Electroencephalogram (EEG) is generally known as a non-stationary signal. Dividing a signal into the...
In many non-stationary signal processing applications such as electroencephalogram (EEG), it is bett...
In many non-stationary signal processing applications such as electroencephalogram (EEG), it is bett...
The record of human brain neural activities, namely electroencephalogram (EEG), is generally known a...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
novel parametric method, based on the non-Gaussian AR model, is proposed for the partition of on-sta...
BCI (Brain Computer Interface) is a communication machine that translates brain massages to computer...
This article was developed with the particular interest of characterize and study EEG signals as a p...
In this paper, we present an approach to estimate fractal complexity of discrete time signal wavefor...
In numerous signal processing applications, non-stationary signals should be segmented to piece-wise...
In numerous signal processing applications, non-stationary signals should be segmented to piece-wise...
In numerous signal processing applications, non-stationary signals should be segmented to piece-wise...
Electroencephalogram (EEG) is generally known as a non-stationary signal. Dividing a signal into the...
Electroencephalogram (EEG) is generally known as a non-stationary signal. Dividing a signal into the...
In many non-stationary signal processing applications such as electroencephalogram (EEG), it is bett...
In many non-stationary signal processing applications such as electroencephalogram (EEG), it is bett...
The record of human brain neural activities, namely electroencephalogram (EEG), is generally known a...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
Statistical learning is a set of tools for modeling and understanding complex datasets. It is ...
novel parametric method, based on the non-Gaussian AR model, is proposed for the partition of on-sta...
BCI (Brain Computer Interface) is a communication machine that translates brain massages to computer...
This article was developed with the particular interest of characterize and study EEG signals as a p...
In this paper, we present an approach to estimate fractal complexity of discrete time signal wavefor...