The relevance vector machine (RVM), a Bayesian extension of the support vector machine (SVM), has considerable potential for the analysis of remotely sensed data. Here, the RVM is introduced and used to derive a multi-class classification of land cover with an accuracy of 91.25%, a level comparable to that achieved by a suite of popular image classifiers including the SVM. Critically, however, the output of the RVM includes an estimate of the posterior probability of class membership. This output may be used to illustrate the uncertainty of the class allocations on a per-case basis and help to identify possible routes to further enhance classification accuracy
Classification of broad area features in satellite imagery is one of the most important applications...
Abstract—A general problem of supervised remotely sensed image classification assumes prior knowledg...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
The relevance vector machine (RVM), a Bayesian extension of the support vector machine (SVM), has co...
Support vector machines (SVM) have considerable potential as classifiers of remotely sensed data. A ...
Abstract — This paper introduces a remotely sensed image classification method based on relevance ve...
Remote sensing technologies have been widely used in the contexts of land cover and land use. The im...
In the last decade, the application of statistical and neural network classifiers to re...
<p>Machine learning offers the potential for effective and efficient classification of remotely sens...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Support vector machines (SVMs) have considerable potential as classifiers of remotely sensed data. A...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
This chapter presents an extensive and critical review on the use of kernel methods and in particula...
A general problem of supervised remotely sensed image classification assumes prior knowledge to be a...
The increase in the number of remote sensing platforms, ranging from satellites to close-range Remot...
Classification of broad area features in satellite imagery is one of the most important applications...
Abstract—A general problem of supervised remotely sensed image classification assumes prior knowledg...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
The relevance vector machine (RVM), a Bayesian extension of the support vector machine (SVM), has co...
Support vector machines (SVM) have considerable potential as classifiers of remotely sensed data. A ...
Abstract — This paper introduces a remotely sensed image classification method based on relevance ve...
Remote sensing technologies have been widely used in the contexts of land cover and land use. The im...
In the last decade, the application of statistical and neural network classifiers to re...
<p>Machine learning offers the potential for effective and efficient classification of remotely sens...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Support vector machines (SVMs) have considerable potential as classifiers of remotely sensed data. A...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
This chapter presents an extensive and critical review on the use of kernel methods and in particula...
A general problem of supervised remotely sensed image classification assumes prior knowledge to be a...
The increase in the number of remote sensing platforms, ranging from satellites to close-range Remot...
Classification of broad area features in satellite imagery is one of the most important applications...
Abstract—A general problem of supervised remotely sensed image classification assumes prior knowledg...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...