Support vector machines (SVMs) have considerable potential as classifiers of remotely sensed data. A constraint on their application in remote sensing has been their binary nature, requiring multiclass classifications to be based upon a large number of binary analyses. Here, an approach for multiclass classification of airborne sensor data by a single SVM analysis is evaluated against a series of classifiers that are widely used in remote sensing, with particular regard to the effect of training set size on classification accuracy. In addition to the SVM, the same datasets were classified using a discriminant analysis, decision tree, and multilayer perceptron neural network. The accuracy statements of the classifications derived from the di...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Many applications of remote sensing only require the classification of a single land type. This is k...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
Support vector machines (SVM) have considerable potential as classifiers of remotely sensed data. A ...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
In the last decade, the application of statistical and neural network classifiers to re...
A wide range of methods for analysis of airborne- and satellite-derived imagery continues to be prop...
Land cover information is essential for many diverse applications. Various natural resource manageme...
The classification of remote sensing images is a challenging task, as image contains bulk of informa...
Land use classification is an important part of many remote sensing applications. A lot of research ...
Classification of broad area features in satellite imagery is one of the most important applications...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Classification of hyperspectral remote sensing data with sup-port vector machines (SVMs) is investig...
<p>Machine learning offers the potential for effective and efficient classification of remotely sens...
Abstract—This paper addresses the problem of the classifica-tion of hyperspectral remote sensing ima...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Many applications of remote sensing only require the classification of a single land type. This is k...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
Support vector machines (SVM) have considerable potential as classifiers of remotely sensed data. A ...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
In the last decade, the application of statistical and neural network classifiers to re...
A wide range of methods for analysis of airborne- and satellite-derived imagery continues to be prop...
Land cover information is essential for many diverse applications. Various natural resource manageme...
The classification of remote sensing images is a challenging task, as image contains bulk of informa...
Land use classification is an important part of many remote sensing applications. A lot of research ...
Classification of broad area features in satellite imagery is one of the most important applications...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Classification of hyperspectral remote sensing data with sup-port vector machines (SVMs) is investig...
<p>Machine learning offers the potential for effective and efficient classification of remotely sens...
Abstract—This paper addresses the problem of the classifica-tion of hyperspectral remote sensing ima...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Many applications of remote sensing only require the classification of a single land type. This is k...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...