Linear filters have historically been used in the past as the most useful tools for suppressing noise in signal processing. It has been shown that the optimal filter which minimizes the mean square error (MSE) between the filter output and the desired output is a linear filter provided that the noise is additive white Gaussian noise (AWGN). However, in most signal processing applications, the noise in the channel through which a signal is transmitted is not AWGN; it is not stationary, and it may have unknown characteristics. To overcome the shortcomings of linear filters, nonlinear filters ranging from the median filters to stack filters have been developed. They have been successfully used in a number of applications, such as enhancing the...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In a series of papers, Plataniotis et al. proposed a number of filters for noise reduction in color ...
In a series of papers, Plataniotis et al. proposed a number of filters for noise reduction in color ...
Linear filters have historically been used in the past as the most useful tools for suppressing nois...
Linear filters have historically been used in the past as the most useful tools for suppressing nois...
Linear filters have historically been used in the past as the most useful tools for suppressing nois...
Recently, a new class of adaptive filters called Generalized Adaptive Neural Filters (GANFs) has eme...
Generalized Adaptive Neural Filters (GANF) are a class of adaptive non-linear filters. This thesis p...
Some nonlinear and adaptive digital image filtering algorithms have been developed in this thesis to...
A class of sliding window operators called generalized stack filters is developed. This class of fil...
Abstract: In current scenario of modern technology, we are facing a necessity of noise removal in si...
A neural filtering technique is proposed to enhance the digital images when images are contaminated ...
This work defines a new nonlinear adaptive filter based on a feed-forward neural network with the ca...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In a series of papers, Plataniotis et al. proposed a number of filters for noise reduction in color ...
In a series of papers, Plataniotis et al. proposed a number of filters for noise reduction in color ...
Linear filters have historically been used in the past as the most useful tools for suppressing nois...
Linear filters have historically been used in the past as the most useful tools for suppressing nois...
Linear filters have historically been used in the past as the most useful tools for suppressing nois...
Recently, a new class of adaptive filters called Generalized Adaptive Neural Filters (GANFs) has eme...
Generalized Adaptive Neural Filters (GANF) are a class of adaptive non-linear filters. This thesis p...
Some nonlinear and adaptive digital image filtering algorithms have been developed in this thesis to...
A class of sliding window operators called generalized stack filters is developed. This class of fil...
Abstract: In current scenario of modern technology, we are facing a necessity of noise removal in si...
A neural filtering technique is proposed to enhance the digital images when images are contaminated ...
This work defines a new nonlinear adaptive filter based on a feed-forward neural network with the ca...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In any signal noise is an undesired quantity, however most of thetime every signal get mixed with no...
In a series of papers, Plataniotis et al. proposed a number of filters for noise reduction in color ...
In a series of papers, Plataniotis et al. proposed a number of filters for noise reduction in color ...