A linear support vector machine (LSVM) is based on deter-mining an optimum hyperplane that separates the data into two classes with the maximum margin. The LSVM typically has high classification accuracy for linearly separable data. However, for nonlinearly separable data, it usually has poor performance. For this type of data, the Support Vector Se-lection and Adaptation (SVSA) method was developed, but its classification accuracy is not very high for linearly sepa-rable data in comparison to LSVM. In this paper, we present a new classifier that combines the LSVM with the SVSA, to be called the Hybrid SVM and SVSA method (HSVSA), for classification of both linearly and nonlinearly separable data and remote sensing images as well. The exper...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Abstract—This paper addresses the problem of the classifica-tion of hyperspectral remote sensing ima...
The extraction and classification problem of spatial features from high r esolution satellite sensor...
Classification of nonlinearly separable data by nonlinear support vector machines is often a difficu...
Classification of nonlinearly separable data by nonlinear support vector machines is often a difficu...
Land cover information is essential for many diverse applications. Various natural resource manageme...
This paper proposed a remote sensing image classification method based on Support Vector Machine (SV...
Classification of broad area features in satellite imagery is one of the most important applications...
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...
This chapter presents an extensive and critical review on the use of kernel methods and in particula...
The classification of remote sensing images is a challenging task, as image contains bulk of informa...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
Remote sensing is collecting information about an object without any direct physical contact with th...
Classification of hyperspectral remote sensing data with sup-port vector machines (SVMs) is investig...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Abstract—This paper addresses the problem of the classifica-tion of hyperspectral remote sensing ima...
The extraction and classification problem of spatial features from high r esolution satellite sensor...
Classification of nonlinearly separable data by nonlinear support vector machines is often a difficu...
Classification of nonlinearly separable data by nonlinear support vector machines is often a difficu...
Land cover information is essential for many diverse applications. Various natural resource manageme...
This paper proposed a remote sensing image classification method based on Support Vector Machine (SV...
Classification of broad area features in satellite imagery is one of the most important applications...
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...
This chapter presents an extensive and critical review on the use of kernel methods and in particula...
The classification of remote sensing images is a challenging task, as image contains bulk of informa...
All in-text references underlined in blue are linked to publications on ResearchGate, letting you ac...
Remote sensing is collecting information about an object without any direct physical contact with th...
Classification of hyperspectral remote sensing data with sup-port vector machines (SVMs) is investig...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Abstract—This paper addresses the problem of the classifica-tion of hyperspectral remote sensing ima...
The extraction and classification problem of spatial features from high r esolution satellite sensor...