The absence of assumptions about the dataset to be classified is one of the major attractions of neural networks for supervised image classification applications. Classification by a neural network does, however, make assumptions about the classes. One key assumption typically made is that the set of classes has been defined exhaustively. If this assumption is unsatisfied, cases of an untrained class will be present and commissioned into the set of trained classes to the detriment of classification accuracy. This was observed in land cover classifications derived with multi-layer perceptron (MLP) and radial basis function (RBF) neural networks in which the presence of an untrained class resulted in a 12.5% decrease in the accuracy of crop c...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Abstract Classification is the technique by which real world objectsland covers are identified withi...
This paper proposes a novel learning algorithm for constructing data classifiers with radial basis f...
Freedom from assumptions about the data set used is one attraction of neural network classifiers. Ho...
Many assumptions are typically made in the course of a supervised digital image classification. The ...
Neural networks are attractive tools for the derivation of thematic maps from remotely sensed data. ...
Abstract. In practice, numerous applications exist where the data are imbalanced. It supposes a dama...
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
The use of artificial neural networks for the classification of remotely sensed imagery offers sever...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Two methods of classification and related fast training algorithms are compared with each other and ...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...
This paper considers the performance of radial basis function neural networks for the purpose of dat...
Radial basis function neural networks (RBF neural networks), as an alternative to multilayer percept...
The paper considers a number of strategies for training radial basis function (RBF) classifiers. A b...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Abstract Classification is the technique by which real world objectsland covers are identified withi...
This paper proposes a novel learning algorithm for constructing data classifiers with radial basis f...
Freedom from assumptions about the data set used is one attraction of neural network classifiers. Ho...
Many assumptions are typically made in the course of a supervised digital image classification. The ...
Neural networks are attractive tools for the derivation of thematic maps from remotely sensed data. ...
Abstract. In practice, numerous applications exist where the data are imbalanced. It supposes a dama...
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
The use of artificial neural networks for the classification of remotely sensed imagery offers sever...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Two methods of classification and related fast training algorithms are compared with each other and ...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...
This paper considers the performance of radial basis function neural networks for the purpose of dat...
Radial basis function neural networks (RBF neural networks), as an alternative to multilayer percept...
The paper considers a number of strategies for training radial basis function (RBF) classifiers. A b...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Abstract Classification is the technique by which real world objectsland covers are identified withi...
This paper proposes a novel learning algorithm for constructing data classifiers with radial basis f...