The successful detection and classification of events require using signal processing algorithms suitable for analysis of nonlinear and nonstationary signals like seismic and acoustic ones. A key point of the signal classification is to generate the feature vector by the means whose signals can be characterized and differentiated from another classes of signals. Some characteristics of seismic and acoustic signals can be described in the frequency and time-frequency domain by using adaptive signal processing methods like the Hilbert-Huang transform. The paper presents results of seismic and acoustic signal processing in the process of feature vector generation by detection of significant frequency components in the energy density spectrum o...
Abstract- This paper proposes the use of Hilbert-Huang transform (HHT) empirical noise model (EMD) t...
Hilbert-Huang transform (HHT) is proposed to process the seismic response recordings in an 8-story f...
The Hilbert-based time-frequency analysis has promising capacity to reveal the time-variant behavior...
The successful detection and classification of events require using signal processing algorithms sui...
This paper discusses the possible use of Hilbert-Huang transform to analyze the data obtained from p...
Part 11: Simulations and Fuzzy ModelingInternational audienceA new efficient approach for generating...
1272-1278In order to realize feature extraction and classification for underwater target signals, in...
In the frame of this study, the problem of detecting the anomalies in nonstationary process signals ...
Transient characteristics of a signal can be effectively exhibited in time-frequency domain. Hilbert...
This paper will describe an algorithm for detecting and classifying seismic and acoustic signals for...
The use of seismic signals brings new challenges for the effective detection and classification of v...
An algorithm involving signal processing in both the time and frequency domail is shown to compute H...
Abstract A new method of spectral analysis, using an approach we call the em-pirical mode decomposit...
Time and frequency localizations are of crucial importance in the analysis of nonlinear and non-stat...
pih.sagepub.com Hilbert–Huang transformation-based time-frequency analysis methods in biomedical sig...
Abstract- This paper proposes the use of Hilbert-Huang transform (HHT) empirical noise model (EMD) t...
Hilbert-Huang transform (HHT) is proposed to process the seismic response recordings in an 8-story f...
The Hilbert-based time-frequency analysis has promising capacity to reveal the time-variant behavior...
The successful detection and classification of events require using signal processing algorithms sui...
This paper discusses the possible use of Hilbert-Huang transform to analyze the data obtained from p...
Part 11: Simulations and Fuzzy ModelingInternational audienceA new efficient approach for generating...
1272-1278In order to realize feature extraction and classification for underwater target signals, in...
In the frame of this study, the problem of detecting the anomalies in nonstationary process signals ...
Transient characteristics of a signal can be effectively exhibited in time-frequency domain. Hilbert...
This paper will describe an algorithm for detecting and classifying seismic and acoustic signals for...
The use of seismic signals brings new challenges for the effective detection and classification of v...
An algorithm involving signal processing in both the time and frequency domail is shown to compute H...
Abstract A new method of spectral analysis, using an approach we call the em-pirical mode decomposit...
Time and frequency localizations are of crucial importance in the analysis of nonlinear and non-stat...
pih.sagepub.com Hilbert–Huang transformation-based time-frequency analysis methods in biomedical sig...
Abstract- This paper proposes the use of Hilbert-Huang transform (HHT) empirical noise model (EMD) t...
Hilbert-Huang transform (HHT) is proposed to process the seismic response recordings in an 8-story f...
The Hilbert-based time-frequency analysis has promising capacity to reveal the time-variant behavior...