This work investigates learning and generalisation capabilities of Radial Basis Function Networks used to solve function regression and classification tasks in the environmental context. In particular RBFN is applied to solve the problem of snow cover thickness estimation in which critical aspects such as minimal training condition, weak pattern description and inconsistency among data arise. The RBFN shows good performances and high flexibility in coping with regression, hard and soft classifications which are complementary tasks in the analysis of complex environmental phenomena
Neural networks are attractive tools for the derivation of thematic maps from remotely sensed data. ...
Radial Basis Function (RBF) networks are examples of a versatile artificial neural network paradigm ...
In this study, a network using radial basis functions as the mapping function in the evolutionary eq...
This work investigates learning and generalisation capabilities of Radial Basis Function Networks us...
This paper reports an experimental study designed for the in-depth investigation of how the radial b...
This study discusses the theoretical underpinnings of a novel multi-scale radial basis function (MSR...
The work deals with the application of Radial basis functions neural networks to spatial predictions...
This paper discusses the performance of Radial Basis Function networks (RBF) in a problem of spatial...
The radial basis function (RBF) network has been used intensively. Besides its applications, several...
This study explores the learning problem from two broad perspectives, consisting of statistical regr...
Radial Basis Function networks with linear outputs are often used in regression problems because the...
Radial basis function networks (RBFNs) have gained widespread appeal amongst researchers and have sh...
We analyze how radial basis functions are able to handle problems which are not linearly separable. ...
For global data representation, like the approximation of a surface, algebraic or trigonometric poly...
© 1996-2018 Society of Exploration Geophysicists All Rights Reserved.Artificial Neural Networks (ANN...
Neural networks are attractive tools for the derivation of thematic maps from remotely sensed data. ...
Radial Basis Function (RBF) networks are examples of a versatile artificial neural network paradigm ...
In this study, a network using radial basis functions as the mapping function in the evolutionary eq...
This work investigates learning and generalisation capabilities of Radial Basis Function Networks us...
This paper reports an experimental study designed for the in-depth investigation of how the radial b...
This study discusses the theoretical underpinnings of a novel multi-scale radial basis function (MSR...
The work deals with the application of Radial basis functions neural networks to spatial predictions...
This paper discusses the performance of Radial Basis Function networks (RBF) in a problem of spatial...
The radial basis function (RBF) network has been used intensively. Besides its applications, several...
This study explores the learning problem from two broad perspectives, consisting of statistical regr...
Radial Basis Function networks with linear outputs are often used in regression problems because the...
Radial basis function networks (RBFNs) have gained widespread appeal amongst researchers and have sh...
We analyze how radial basis functions are able to handle problems which are not linearly separable. ...
For global data representation, like the approximation of a surface, algebraic or trigonometric poly...
© 1996-2018 Society of Exploration Geophysicists All Rights Reserved.Artificial Neural Networks (ANN...
Neural networks are attractive tools for the derivation of thematic maps from remotely sensed data. ...
Radial Basis Function (RBF) networks are examples of a versatile artificial neural network paradigm ...
In this study, a network using radial basis functions as the mapping function in the evolutionary eq...