We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the signal type to a class of slowly varying periodic signals with harmonic components, a class which includes real signals such as the electroencephalogram or speech signals. This paper presents two methods designed to detect these signal types: the ambiguity filter and the time-frequency correlator. Both methods are based on different modifications of the time-frequency-matched filter and both methods attempt to overcome the problem of predefining the template set for the matched filter. The ambiguity filter method reduces the number of required templates by one half; the time-frequency correlator method does not require a predefined template se...
Non-stationary signals are very common in nature, consider for example speech, music or heart rate. ...
The broad-based goal of this thesis is to understand, detect, identify and quantify the abstract ent...
Most existing classification methods cannot work in low signal-to-noise ratio (SNR) environments. Th...
We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the s...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
In this paper, we present a low-complexity hybrid time-frequency approach for the detection of audio...
Spectral analysis of non-stationary signals is known to be a challenging task. Classical methods lik...
This paper deals with the modelization and detection of non-stationary random signals in the time-fr...
A method is introduced for the spectral analysis of complex noisy signals containing several frequen...
This paper deals with the modelization and detection of non-stationary random signals in the time-fr...
In this paper, we present a hybrid time-frequency approach for the detection of audio signal pattern...
xx, 136 p. : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2009 SunThis the...
Recent investigations have lead to the use of TFRs to filter noise-corrupted, frequency varying sign...
It is a well known fact that the time-frequency domain is very well adapted for representing audio s...
A tutorial review of several mixed time-frequency representations of signals and systems is presente...
Non-stationary signals are very common in nature, consider for example speech, music or heart rate. ...
The broad-based goal of this thesis is to understand, detect, identify and quantify the abstract ent...
Most existing classification methods cannot work in low signal-to-noise ratio (SNR) environments. Th...
We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the s...
Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, p...
In this paper, we present a low-complexity hybrid time-frequency approach for the detection of audio...
Spectral analysis of non-stationary signals is known to be a challenging task. Classical methods lik...
This paper deals with the modelization and detection of non-stationary random signals in the time-fr...
A method is introduced for the spectral analysis of complex noisy signals containing several frequen...
This paper deals with the modelization and detection of non-stationary random signals in the time-fr...
In this paper, we present a hybrid time-frequency approach for the detection of audio signal pattern...
xx, 136 p. : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2009 SunThis the...
Recent investigations have lead to the use of TFRs to filter noise-corrupted, frequency varying sign...
It is a well known fact that the time-frequency domain is very well adapted for representing audio s...
A tutorial review of several mixed time-frequency representations of signals and systems is presente...
Non-stationary signals are very common in nature, consider for example speech, music or heart rate. ...
The broad-based goal of this thesis is to understand, detect, identify and quantify the abstract ent...
Most existing classification methods cannot work in low signal-to-noise ratio (SNR) environments. Th...