The aim of this paper is to carry out analysis of Maximum Likelihood (ML) on Landsat 5 TM (Thematic Mapper) satellite data of tropical land covers. ML is a supervised classification method which is based on the Bayes theorem. It makes use of a discriminant function to assign pixel to the class with the highest likelihood. Class mean vector and covariance matrix are the key inputs to the function and can be estimated from the training pixels of a particular class. In this study, we used ML to classify a diverse tropical land covers recorded from Landsat 5 TM satellite. The classification is carefully examined using visual analysis, classification accuracy, band correlation and decision boundary. The results show that the separation between m...
Image analysis methods were developed and diversified greatly in recent years due to increasing spee...
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 aim of this paper is to carry out analysis of Maximum Likelihood (ML)classification on multispec...
This study presents simulation of land cover classification for RazakSAT satellite. The simulation m...
AbstractThis study presents simulation of land cover classification for RazakSAT satellite. The simu...
In this paper, we assess the accuracy of maximum likelihood, neural network and support vector machi...
This study aims to investigate the effects of haze on the accuracy of Maximum Likelihood classificat...
Satellite image classification is crucial in various applications such as urban planning, environmen...
This article aims to apply machine learning algorithms to the supervised classification of optical s...
Abstract: Image classification entails the important part of digital image and has been very essenti...
Remotely sensed images are major sources of information, and as such, are used in many fields like m...
C.H.W Souza, E. Mercante, V.H.R. Prudente and D.D.D. Justina. 2013. Methods of performance evaluatio...
Remote sensing techniques are vital for early detection of several problems such as natural disaster...
In this paper, four versions of the sequential maximum likelihood algorithm have been employed to cl...
Image analysis methods were developed and diversified greatly in recent years due to increasing spee...
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 aim of this paper is to carry out analysis of Maximum Likelihood (ML)classification on multispec...
This study presents simulation of land cover classification for RazakSAT satellite. The simulation m...
AbstractThis study presents simulation of land cover classification for RazakSAT satellite. The simu...
In this paper, we assess the accuracy of maximum likelihood, neural network and support vector machi...
This study aims to investigate the effects of haze on the accuracy of Maximum Likelihood classificat...
Satellite image classification is crucial in various applications such as urban planning, environmen...
This article aims to apply machine learning algorithms to the supervised classification of optical s...
Abstract: Image classification entails the important part of digital image and has been very essenti...
Remotely sensed images are major sources of information, and as such, are used in many fields like m...
C.H.W Souza, E. Mercante, V.H.R. Prudente and D.D.D. Justina. 2013. Methods of performance evaluatio...
Remote sensing techniques are vital for early detection of several problems such as natural disaster...
In this paper, four versions of the sequential maximum likelihood algorithm have been employed to cl...
Image analysis methods were developed and diversified greatly in recent years due to increasing spee...
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” ...