Most existing classification methods cannot work in low signal-to-noise ratio (SNR) environments. This limitation motivates the signal filtering before the classification process. In this paper, a general framework that links the time-frequency peak filtering (TFPF) and traditional feature-based signal classification is explored. As the name suggests, TFPF is a filtering approach to encode the received signal as the instantaneous frequency (IF) of an analytic signal, and then the filtered signal is obtained by estimating the peak in the time-frequency domain of the encoded signal. The proposed framework is tested on the recognition of some communication signals. Numerical results demonstrate the effectiveness of this classification scheme f...
This paper describes a procedure for the time-frequency analysis of signals, based on TFDs and IF es...
Conference PaperTime-frequency representations (TFRs) provide a powerful and flexible structure for ...
This paper deals with the problem of extracting information from non-stationary signals in the form ...
Time-frequency peak filtering (TFPF) allows the reconstruction of signals from observations corrupte...
Time-frequency peak filtering (TFPF) allows the reconstruction of signals from observations corrupte...
Time-Frequency Signal Analysis and Processing (TFSAP) is a collection of theory, techniques and algo...
Motivated by the existing time-frequency peak filtering (TFPF) algorithm, herein a robust time-varyi...
We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the s...
The first purpose of this chapter is to review several TFRs defined in Table 4.1 and to describe man...
We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the s...
Simultaneous analysis of signals in time and frequency domains is a standard approach in many signal...
This paper presents a tutorial review of recent advances in the field of time-frequency (t, f) signa...
Abstract. Time-frequency (t-f) analysis has clearly reached a certain maturity. One can now often pr...
International audienceFor efficient analysis of non-stationary signals, such as radar, sonar, speech...
This paper presents a tutorial review of recent advances in the field of time–frequency (t,f)(t,f) s...
This paper describes a procedure for the time-frequency analysis of signals, based on TFDs and IF es...
Conference PaperTime-frequency representations (TFRs) provide a powerful and flexible structure for ...
This paper deals with the problem of extracting information from non-stationary signals in the form ...
Time-frequency peak filtering (TFPF) allows the reconstruction of signals from observations corrupte...
Time-frequency peak filtering (TFPF) allows the reconstruction of signals from observations corrupte...
Time-Frequency Signal Analysis and Processing (TFSAP) is a collection of theory, techniques and algo...
Motivated by the existing time-frequency peak filtering (TFPF) algorithm, herein a robust time-varyi...
We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the s...
The first purpose of this chapter is to review several TFRs defined in Table 4.1 and to describe man...
We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the s...
Simultaneous analysis of signals in time and frequency domains is a standard approach in many signal...
This paper presents a tutorial review of recent advances in the field of time-frequency (t, f) signa...
Abstract. Time-frequency (t-f) analysis has clearly reached a certain maturity. One can now often pr...
International audienceFor efficient analysis of non-stationary signals, such as radar, sonar, speech...
This paper presents a tutorial review of recent advances in the field of time–frequency (t,f)(t,f) s...
This paper describes a procedure for the time-frequency analysis of signals, based on TFDs and IF es...
Conference PaperTime-frequency representations (TFRs) provide a powerful and flexible structure for ...
This paper deals with the problem of extracting information from non-stationary signals in the form ...