The classification performance of passive sonar can be improved by extracting the features of ship-radiated noise. Traditional feature extraction methods neglect the nonlinear features in ship-radiated noise, such as entropy. The multiscale sample entropy (MSE) algorithm has been widely used for quantifying the entropy of a signal, but there are still some limitations. To remedy this, the hierarchical cosine similarity entropy (HCSE) is proposed in this paper. Firstly, the hierarchical decomposition is utilized to decompose a time series into some subsequences. Then, the sample entropy (SE) is modified by utilizing Shannon entropy rather than conditional entropy and employing angular distance instead of Chebyshev distance. Finally, the comp...
In the field of underwater acoustic signal processing, the ship radiated noise contains a large amou...
The extension of sample entropy methodologies to multivariate signals has received considerable atte...
Measuring complexity of observed time series plays an important role for understanding the character...
The classification performance of passive sonar can be improved by extracting the features of ship-r...
In order to accurately identify various types of ships and develop coastal defenses, a single featur...
Recently many signal processing and pattern recognition schemes have been developed to process ship ...
Accurate underwater target detection and recognition in complex marine environments has always been ...
In order to solve the problem of feature extraction of underwater acoustic signals in complex ocean ...
The nonparametric Sample Entropy (SE) estimator has become a standard for the quantification of stru...
175-183A novel feature extraction method for ship-radiated noise based on extreme-point symmetric mo...
This paper analyzes sea clutter by a random series without assuming the scattering being independent...
The processing of ship radiated noise is a research hotspot in the field of military and marine reso...
Slope entropy (Slopen) has been demonstrated to be an excellent approach to extracting ship-radiated...
There are numerous studies showing that there is a constant increase in the ocean ambient noise leve...
A new denoising algorithm and feature extraction algorithm that combine a new kind of permutation en...
In the field of underwater acoustic signal processing, the ship radiated noise contains a large amou...
The extension of sample entropy methodologies to multivariate signals has received considerable atte...
Measuring complexity of observed time series plays an important role for understanding the character...
The classification performance of passive sonar can be improved by extracting the features of ship-r...
In order to accurately identify various types of ships and develop coastal defenses, a single featur...
Recently many signal processing and pattern recognition schemes have been developed to process ship ...
Accurate underwater target detection and recognition in complex marine environments has always been ...
In order to solve the problem of feature extraction of underwater acoustic signals in complex ocean ...
The nonparametric Sample Entropy (SE) estimator has become a standard for the quantification of stru...
175-183A novel feature extraction method for ship-radiated noise based on extreme-point symmetric mo...
This paper analyzes sea clutter by a random series without assuming the scattering being independent...
The processing of ship radiated noise is a research hotspot in the field of military and marine reso...
Slope entropy (Slopen) has been demonstrated to be an excellent approach to extracting ship-radiated...
There are numerous studies showing that there is a constant increase in the ocean ambient noise leve...
A new denoising algorithm and feature extraction algorithm that combine a new kind of permutation en...
In the field of underwater acoustic signal processing, the ship radiated noise contains a large amou...
The extension of sample entropy methodologies to multivariate signals has received considerable atte...
Measuring complexity of observed time series plays an important role for understanding the character...