The size of the training data set is a major determinant of classification accuracy. Neverthe- less, the collection of a large training data set for supervised classifiers can be a challenge, especially for studies covering a large area, which may be typical of many real-world applied projects. This work investigates how variations in training set size, ranging from a large sample size (n = 10,000) to a very small sample size (n = 40), affect the performance of six supervised machine-learning algo- rithms applied to classify large-area high-spatial-resolution (HR) (1–5 m) remotely sensed data within the context of a geographic object-based image analysis (GEOBIA) approach. GEOBIA, in which adjacent similar pixels are grouped into image-obje...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map la...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map land cov...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map land cov...
The size of the training data set is a major determinant of classification accuracy. Neverthe- less,...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
This study evaluates and compares the performance of four machine learning classifiers—support vecto...
In this paper, we assess the accuracy of maximum likelihood, neural network and support vector machi...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
The efficient mapping of land cover from remotely sensed data is highly desirable as land cover info...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map la...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map land cov...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map land cov...
The size of the training data set is a major determinant of classification accuracy. Neverthe- less,...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
High spatial resolution (HR) (1m – 5m) remotely sensed data in conjunction with supervised machine l...
This study evaluates and compares the performance of four machine learning classifiers—support vecto...
In this paper, we assess the accuracy of maximum likelihood, neural network and support vector machi...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
Cloud free multispectral scanner (MSS) data of LANDSAT were analysed for studying the effect of the ...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
The efficient mapping of land cover from remotely sensed data is highly desirable as land cover info...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map la...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map land cov...
High spatial resolution (1–5 m) remotely sensed datasets are increasingly being used to map land cov...