Imbalanced learning is a common problem in remote sensing imagery-based land-use and land-cover classifications. Imbalanced learning can lead to a reduction in classification accuracy and even the omission of the minority class. In this paper, an impartial semi-supervised learning strategy based on extreme gradient boosting (ISS-XGB) is proposed to classify very high resolution (VHR) images with imbalanced data. ISS-XGB solves multi-class classification by using several semi-supervised classifiers. It first employs multi-group unlabeled data to eliminate the imbalance of training samples and then utilizes gradient boosting-based regression to simulate the target classes with positive and unlabeled samples. In this study, experiments were co...
A key factor for the success of supervised remote sensing image classification is the definition of ...
The multilayer perceptron neural network has proved to be a very effective tool for the classificati...
This paper addresses the recent trends in machine learning methods for the automatic classification ...
Imbalanced learning is a methodological challenge in remote sensing communities, especially in compl...
Hyperspectral remote sensing image classification has been widely employed for numerous applications...
23rd International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences C...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
A Bayesian hierarchical model is presented to classify very high resolution (VHR) images in a semisu...
In many remote-sensing projects, one is usually interested in a small number of land-cover classes p...
While we attempt to develop the balanced error rate (BER) minimization learning framework for random...
This paper introduces a novel semi-supervised tri-training classification algorithm based on diversi...
In many remote sensing projects on land cover mapping, the interest is often in a sub-set of classes...
Imbalanced data is a common problem in machine learning where the number of observations that belong...
Hyperspectral image technology in land classification is a distinct advantage compared to ordinary R...
In real-world applications, it is difficult to collect labeled samples, and supervised learning meth...
A key factor for the success of supervised remote sensing image classification is the definition of ...
The multilayer perceptron neural network has proved to be a very effective tool for the classificati...
This paper addresses the recent trends in machine learning methods for the automatic classification ...
Imbalanced learning is a methodological challenge in remote sensing communities, especially in compl...
Hyperspectral remote sensing image classification has been widely employed for numerous applications...
23rd International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences C...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
A Bayesian hierarchical model is presented to classify very high resolution (VHR) images in a semisu...
In many remote-sensing projects, one is usually interested in a small number of land-cover classes p...
While we attempt to develop the balanced error rate (BER) minimization learning framework for random...
This paper introduces a novel semi-supervised tri-training classification algorithm based on diversi...
In many remote sensing projects on land cover mapping, the interest is often in a sub-set of classes...
Imbalanced data is a common problem in machine learning where the number of observations that belong...
Hyperspectral image technology in land classification is a distinct advantage compared to ordinary R...
In real-world applications, it is difficult to collect labeled samples, and supervised learning meth...
A key factor for the success of supervised remote sensing image classification is the definition of ...
The multilayer perceptron neural network has proved to be a very effective tool for the classificati...
This paper addresses the recent trends in machine learning methods for the automatic classification ...