Remote sensing provides a valuable tool for monitoring land cover across large areas of land. A simple yet popular method for land cover classification is Maximum Likelihood Classification (MLC), which assumes a single normal distribution of the samples per class in the feature space. Mixture Discriminant Analysis (MDA) is a natural extension of MLC which can be used with varying distributions and multiple distributions per class, which simplifies the classification process tremendously. We compare the accuracies of MLC and MDA (using a Gaussian and t-distribution) as the number of training points are systematically reduced in order to simulate varying reference data availability conditions. The results show that the more robust t-distribut...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
ABSTRACT: Two different methods of Bayesian segmentation algorithm were used with different band com...
The accuracy of classified results is often measured in comparison with reference or “ground truth” ...
The original publication is available at http://sajg.org.zaCITATION: Ritchie, M. et al. 2018. Assess...
Multispectral remote sensing images are widely used for landuse/landcover (LULC) classification. Per...
There are difficulties in land cover/use classification of LANDSAT MSS and TM data. The minimum leve...
The aim of this paper is to carry out analysis of Maximum Likelihood (ML) on Landsat 5 TM (Thematic ...
Assessing the accuracy of land cover maps is often prohibitively expensive because of the difficulty...
Machine learning classifiers are being increasingly used nowadays for Land Use and Land Cover (LULC)...
The use of remotely sensed imagery to generate land cover models is common today. Validation of thes...
This study aims to investigate the effects of haze on the accuracy of Maximum Likelihood classificat...
This study compares the performance of two non-parametric classifiers and Gaussian Maximum Likelihoo...
Researchers in remote sensing have attempted to increase the accuracy of land cover information extr...
Abstract: Using mixture models to represent univariate and multivariate data has shown to be a very ...
The error matrix is the most common way of expressing the accuracy of remote sensing image classific...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
ABSTRACT: Two different methods of Bayesian segmentation algorithm were used with different band com...
The accuracy of classified results is often measured in comparison with reference or “ground truth” ...
The original publication is available at http://sajg.org.zaCITATION: Ritchie, M. et al. 2018. Assess...
Multispectral remote sensing images are widely used for landuse/landcover (LULC) classification. Per...
There are difficulties in land cover/use classification of LANDSAT MSS and TM data. The minimum leve...
The aim of this paper is to carry out analysis of Maximum Likelihood (ML) on Landsat 5 TM (Thematic ...
Assessing the accuracy of land cover maps is often prohibitively expensive because of the difficulty...
Machine learning classifiers are being increasingly used nowadays for Land Use and Land Cover (LULC)...
The use of remotely sensed imagery to generate land cover models is common today. Validation of thes...
This study aims to investigate the effects of haze on the accuracy of Maximum Likelihood classificat...
This study compares the performance of two non-parametric classifiers and Gaussian Maximum Likelihoo...
Researchers in remote sensing have attempted to increase the accuracy of land cover information extr...
Abstract: Using mixture models to represent univariate and multivariate data has shown to be a very ...
The error matrix is the most common way of expressing the accuracy of remote sensing image classific...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
ABSTRACT: Two different methods of Bayesian segmentation algorithm were used with different band com...
The accuracy of classified results is often measured in comparison with reference or “ground truth” ...