Virtually all modern imaging devices collect electromagnetic or acoustic waves and use the energy carried by these waves to determine pixel values to create what is basically an “energy” picture. However, waves also carry “information”, as quantified by some form of entropy, and this may also be used to produce an “information” image. Numerous published studies have demonstrated the advantages of entropy, or “information imaging”, over conventional methods. The most sensitive information measure appears to be the joint entropy of the collected wave and a reference signal. The sensitivity of repeated experimental observations of a slowly-changing quantity may be defined as the mean variation (i.e., observed change) divided by mean variance (...
Recent clinical studies show that the contour of the photoplethysmogram (PPG) wave contains valuable...
<p>MEG signal was first transformed to mutiresolution time-frequency domain by wavelet transformatio...
The main thrust of this dissertation is the application of statistics and information theory to desi...
Virtually all modern imaging devices collect electromagnetic or acoustic waves and use the energy ca...
The paper introduces entropy as a measure for 1D signals. We propose an entropy measure of the relat...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...
This paper presents a thorough study of different types of entropies. Application and comparison of ...
Calculations of entropy of a signal or mutual information between two variables are valuable analyti...
This paper introduces entropy as a feature for 1D signals. It proposes the ratio between signal pert...
Image is made of up pixels that contain some information. The dossier load of an image is measured b...
Abstract There are many techniques of image enhancement. Their parameters are traditionally tuned by...
Entropy profiling is a recently introduced approach that reduces parametric dependence in traditiona...
Recent clinical studies show that the contour of the photoplethysmogram (PPG) wave contains valuable...
This paper introduces entropy as a feature for 1D signals. We propose as entropy measure the ratio b...
Recent clinical studies show that the contour of the photoplethysmogram (PPG) wave contains valuable...
<p>MEG signal was first transformed to mutiresolution time-frequency domain by wavelet transformatio...
The main thrust of this dissertation is the application of statistics and information theory to desi...
Virtually all modern imaging devices collect electromagnetic or acoustic waves and use the energy ca...
The paper introduces entropy as a measure for 1D signals. We propose an entropy measure of the relat...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...
Autoregressive processes play a major role in speech processing (linear prediction), seismic signal ...
This paper presents a thorough study of different types of entropies. Application and comparison of ...
Calculations of entropy of a signal or mutual information between two variables are valuable analyti...
This paper introduces entropy as a feature for 1D signals. It proposes the ratio between signal pert...
Image is made of up pixels that contain some information. The dossier load of an image is measured b...
Abstract There are many techniques of image enhancement. Their parameters are traditionally tuned by...
Entropy profiling is a recently introduced approach that reduces parametric dependence in traditiona...
Recent clinical studies show that the contour of the photoplethysmogram (PPG) wave contains valuable...
This paper introduces entropy as a feature for 1D signals. We propose as entropy measure the ratio b...
Recent clinical studies show that the contour of the photoplethysmogram (PPG) wave contains valuable...
<p>MEG signal was first transformed to mutiresolution time-frequency domain by wavelet transformatio...
The main thrust of this dissertation is the application of statistics and information theory to desi...