In this paper spatial classification rules based on Bayes discriminant functions are considered. The novelty of this work is that the statistical supervised classification method is improved by extending the influence of spatial correlation between observation to be classified and training sample. Such methods are used for data containing spatially correlated noise. Method accuracy is tested experimentally on artificially corrupted images. This classification rule with distance based conditional distribution for class label shows advantage against other classification rule ignoring such influence and against other commonly used supervised classification methods
In this paper supervised classification method is proposed. It is based on Bayes discriminant functi...
In this research we address the problem of classification and labeling of regions given a single sta...
International audienceSpatial autocorrelation is inherent to remotely sensed data. Nearby pixels are...
In this paper spatial classification rules based on Bayes discriminant functions are considered. The ...
AbstractIn statistical image classification, it is usually assumed that feature observations given c...
In statistical image classification it is usually assumed that feature observations given labels are...
The thesis is devoted to the linear discriminant analysis of spatially correlated data. The presence...
In this letter, we establish two sampling schemes to select training and test sets for supervised cl...
Given training sample, the problem of classifying Gaussian spatial data into one of two populations ...
We consider the kernel-based classifier proposed by Younso (2017). This nonparametric classifier all...
In spatial classification it is usually assumed that features observations given labels are independ...
The Bayesian classification rule used for the classification of the observations of the (second-orde...
Discrimination and classification of spatial data has been widely mentioned in the scientific litera...
In this paper, spatial data specified by auto-beta models is analysed by considering a supervised cl...
This article is concerned with a generative approach to supervised classification of spatio-temporal...
In this paper supervised classification method is proposed. It is based on Bayes discriminant functi...
In this research we address the problem of classification and labeling of regions given a single sta...
International audienceSpatial autocorrelation is inherent to remotely sensed data. Nearby pixels are...
In this paper spatial classification rules based on Bayes discriminant functions are considered. The ...
AbstractIn statistical image classification, it is usually assumed that feature observations given c...
In statistical image classification it is usually assumed that feature observations given labels are...
The thesis is devoted to the linear discriminant analysis of spatially correlated data. The presence...
In this letter, we establish two sampling schemes to select training and test sets for supervised cl...
Given training sample, the problem of classifying Gaussian spatial data into one of two populations ...
We consider the kernel-based classifier proposed by Younso (2017). This nonparametric classifier all...
In spatial classification it is usually assumed that features observations given labels are independ...
The Bayesian classification rule used for the classification of the observations of the (second-orde...
Discrimination and classification of spatial data has been widely mentioned in the scientific litera...
In this paper, spatial data specified by auto-beta models is analysed by considering a supervised cl...
This article is concerned with a generative approach to supervised classification of spatio-temporal...
In this paper supervised classification method is proposed. It is based on Bayes discriminant functi...
In this research we address the problem of classification and labeling of regions given a single sta...
International audienceSpatial autocorrelation is inherent to remotely sensed data. Nearby pixels are...