This paper proposed a novel method of decision fusion based on weights of evidence model (WOE). The probability rules from classification results from each separate dataset were fused using WOE to produce the posterior probability for each class. The final classification was obtained by maximum probability. The proposed method was evaluated in land cover classification using two examples. The results showed that the proposed method effectively combined multisensor data in land cover classification and obtained higher classification accuracy than the use of single source data. The weights of evidence model provides an effective decision fusion method for improved land cover classification using multi-sensor data
The importance of utilizing multisource data in ground-cover classification lies in the fact that im...
The paper addresses problems related to classification of images obtained by various types of remote...
This paper addresses the problem of detecting land-cover transitions by analysing multitemporal remo...
This paper proposed a novel method of decision fusion based on weights of evidence model (WOE). The ...
In this study we proposed a decision fusion method based on the weights of evidence model for land c...
This paper proposes a new decision fusion method accounting for conditional dependence (correlation)...
In recent years, decision fusion techniques have been widely applied in many studies to combine info...
High-spatial-resolution (HSR) images and high-temporal-resolution (HTR) images have their unique adv...
This paper proposed a decision fusion method based on Tau model for land cover classification. The m...
We describe how decision tree classifiers can be learned with alternative decision nodes for handlin...
We describe a system that uses decision tree-based tools for seamless acquisition of knowledge for c...
This article discusses how computational intelligence techniques are applied to fuse spectral images...
International audienceThis paper explores a novel data fusion method with the application of Machine...
This study addressed the classification of multi-temporal satellite data from RapidEye by considerin...
Remote sensing image classification is an important and complex problem. Conventional remote sensing...
The importance of utilizing multisource data in ground-cover classification lies in the fact that im...
The paper addresses problems related to classification of images obtained by various types of remote...
This paper addresses the problem of detecting land-cover transitions by analysing multitemporal remo...
This paper proposed a novel method of decision fusion based on weights of evidence model (WOE). The ...
In this study we proposed a decision fusion method based on the weights of evidence model for land c...
This paper proposes a new decision fusion method accounting for conditional dependence (correlation)...
In recent years, decision fusion techniques have been widely applied in many studies to combine info...
High-spatial-resolution (HSR) images and high-temporal-resolution (HTR) images have their unique adv...
This paper proposed a decision fusion method based on Tau model for land cover classification. The m...
We describe how decision tree classifiers can be learned with alternative decision nodes for handlin...
We describe a system that uses decision tree-based tools for seamless acquisition of knowledge for c...
This article discusses how computational intelligence techniques are applied to fuse spectral images...
International audienceThis paper explores a novel data fusion method with the application of Machine...
This study addressed the classification of multi-temporal satellite data from RapidEye by considerin...
Remote sensing image classification is an important and complex problem. Conventional remote sensing...
The importance of utilizing multisource data in ground-cover classification lies in the fact that im...
The paper addresses problems related to classification of images obtained by various types of remote...
This paper addresses the problem of detecting land-cover transitions by analysing multitemporal remo...