In active sonar and radar the noise power in the presence of reverberation and clutter is not stationary. This makes automated detection, tracking, and classification of targets difficult. One way to deal with this problem is to normalize the data. The goal of normalization is to equalize the noise power of the data. This will make the noise-only output of the detection test statistic T( x) as constant as possible. Successful normalization makes sonar signal processing much simpler. For example, in automatic tracking, normalizing increases the probability that true tracks get initiated, and decreases the probability that false tracks get initiated. Normalizers work by estimating the background noise power and dividing T(x) by that estimate....
This paper presents a spectral normalisation based method for extraction of speech robust features i...
A review of detection threshold concepts is followed by an investigation into published theory for t...
The topic of this book is proportionate-type normalized least mean squares (PtNLMS) adaptive filteri...
The purpose of this study is to investigate the application of multidimensional (m-D) power spectral...
Background normalization algorithms attempt to suppress the ambient and self-noise during the measur...
Abstract: The reconstruction of periodic acoustical signals with time domain periodic averaging req...
The use of high–resolution, active sonar systems in littoral environments often results in high fals...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
Sonar imaging is currently the exemplary choice used in underwater imaging. However, since sound sig...
International audienceThis article addresses improvements on the design of the adaptive normalized m...
DoctorThis thesis proposes the mean-square-deviation (MSD) analysis of the normalized subband adapti...
In this paper, we propose a framework for joint normalization of spectral and temporal statistics of...
Abstract: The changing on peaks structure of the speech spectrum is perhaps the most important cause...
Traditional passive broadband sonar processing has been constructed by performing spatial decomposit...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
A review of detection threshold concepts is followed by an investigation into published theory for t...
The topic of this book is proportionate-type normalized least mean squares (PtNLMS) adaptive filteri...
The purpose of this study is to investigate the application of multidimensional (m-D) power spectral...
Background normalization algorithms attempt to suppress the ambient and self-noise during the measur...
Abstract: The reconstruction of periodic acoustical signals with time domain periodic averaging req...
The use of high–resolution, active sonar systems in littoral environments often results in high fals...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
Sonar imaging is currently the exemplary choice used in underwater imaging. However, since sound sig...
International audienceThis article addresses improvements on the design of the adaptive normalized m...
DoctorThis thesis proposes the mean-square-deviation (MSD) analysis of the normalized subband adapti...
In this paper, we propose a framework for joint normalization of spectral and temporal statistics of...
Abstract: The changing on peaks structure of the speech spectrum is perhaps the most important cause...
Traditional passive broadband sonar processing has been constructed by performing spatial decomposit...
This paper presents a spectral normalisation based method for extraction of speech robust features i...
A review of detection threshold concepts is followed by an investigation into published theory for t...
The topic of this book is proportionate-type normalized least mean squares (PtNLMS) adaptive filteri...