AbstractA systematic approach for supervised classification of remote sensing images is introduced in this letter. The proposed method deals with the Multi-Level Manifolds, which primarily deals by preserving the local information inside a class along with the class label information. The sharing features are also considered while training the data to represent the parent manifold. The out of sample problem is solved by using Pulse Coded Neural Network which potentially reduces the computational cost. The proposed method solves the major problems of supervised learning systems such as out of sample and preserving local structure. The proposed system is tested in the standard data sets and the results are appreciable
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
In the last decade, the application of statistical and neural network classifiers to re...
In recent years, the remote-sensing community has became very interested in applying neural networks...
This paper proposes the application of Structured Neural Networks to the supervised classification o...
This paper proposes the application of structured neural networks to classification of multisensor r...
Abstract- This paper proposes the application of structured neural networks to classification of mul...
<p>Machine learning offers the potential for effective and efficient classification of remotely sens...
One of the major areas where neural networks are often applied is imaging classification. In this ap...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
An experimental analysis of the use of different neural models for the supervised classification of ...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
<p> High resolution remote sensing image captured by the satellites or the aircraft is of great hel...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...
Abstract: Dimensionality reduction and segmentation have been used as methods to reduce the complexi...
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
In the last decade, the application of statistical and neural network classifiers to re...
In recent years, the remote-sensing community has became very interested in applying neural networks...
This paper proposes the application of Structured Neural Networks to the supervised classification o...
This paper proposes the application of structured neural networks to classification of multisensor r...
Abstract- This paper proposes the application of structured neural networks to classification of mul...
<p>Machine learning offers the potential for effective and efficient classification of remotely sens...
One of the major areas where neural networks are often applied is imaging classification. In this ap...
A neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
An experimental analysis of the use of different neural models for the supervised classification of ...
A Neural network with topology 2-8-8 is evaluated against the standard of supervised non-parametric ...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
<p> High resolution remote sensing image captured by the satellites or the aircraft is of great hel...
Various experimental comparisons of algorithms for supervised classification of remote-sensing image...
Abstract: Dimensionality reduction and segmentation have been used as methods to reduce the complexi...
Neural networks are growing in popularity today as a tool for classification of remotely sensed imag...
In the last decade, the application of statistical and neural network classifiers to re...
In recent years, the remote-sensing community has became very interested in applying neural networks...