This paper addresses the problem of detecting land-cover transitions by analysing multitemporal remote-sensing images. In order to develop an effective system for the detection of land-cover transitions, an ensemble of non-parametric multitemporal classifiers is defined and integrated in the context of a multiple classifier system (MCS). Each multitemporal classifier is developed in the framework of the compound classification (CC) decision rule. To develop as uncorrelated as possible classification procedures, the estimates of statistical parameters of classifiers are carried out according to different approaches (i.e., multilayer perceptron neural networks, radial basis functions neural networks, and k-nearest neighbour technique). The ou...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
A new method for remotely sensed change detection based on artificial neural networks is presented. ...
In this paper, we propose a classification system based on a multiple-classifier architecture, which...
In this paper, detection of land-cover/land-use transitions by using multitemporal remote-sensing im...
In this paper the problem of detecting land cover changes by using multitemporal remote sensing imag...
This paper presents a novel iterative active learning (AL) technique aimed at defining effective mul...
Abstract—We propose a supervised nonparametric technique, based on the “compound classification rule...
The automated interpretation of aerial image data is a task with increasing significance for several...
Remote sensing is being increasingly used over the last few decades as a powerful tool for monitorin...
Remote sensing is being increasingly used over the last few decades as a powerful tool for monitorin...
This paper addresses the problem of land-cover map updating by classification of multitemporal remot...
Developments in the technology of registering images collected by a multispectral scanner over the s...
This paper presents a novel land cover change detection method that em-ploys a sliding window over h...
Abstract—A data fusion approach to the classification of multi-source and multitemporal remote-sensi...
In this paper a novel object-oriented change detection approach in multitemporal remote-sensing imag...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
A new method for remotely sensed change detection based on artificial neural networks is presented. ...
In this paper, we propose a classification system based on a multiple-classifier architecture, which...
In this paper, detection of land-cover/land-use transitions by using multitemporal remote-sensing im...
In this paper the problem of detecting land cover changes by using multitemporal remote sensing imag...
This paper presents a novel iterative active learning (AL) technique aimed at defining effective mul...
Abstract—We propose a supervised nonparametric technique, based on the “compound classification rule...
The automated interpretation of aerial image data is a task with increasing significance for several...
Remote sensing is being increasingly used over the last few decades as a powerful tool for monitorin...
Remote sensing is being increasingly used over the last few decades as a powerful tool for monitorin...
This paper addresses the problem of land-cover map updating by classification of multitemporal remot...
Developments in the technology of registering images collected by a multispectral scanner over the s...
This paper presents a novel land cover change detection method that em-ploys a sliding window over h...
Abstract—A data fusion approach to the classification of multi-source and multitemporal remote-sensi...
In this paper a novel object-oriented change detection approach in multitemporal remote-sensing imag...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
A new method for remotely sensed change detection based on artificial neural networks is presented. ...
In this paper, we propose a classification system based on a multiple-classifier architecture, which...