textThis research focused on the development of a hierarchical approach for classification that is robust with respect to training data that are limited both in quantity and spatial extent. Many difficult classification problems involve a high dimensional input and output space (candidate labels). Due to the "curse of dimensionality," it is necessary to reduce the size of the input space when there is only a limited quantity of training data available. While a significant amount of research has focused on transforming the input space into a reduced feature space that accurately discriminates between the classes in a fixed output space, traditional approaches fail to capitalize on the domain knowledge and flexibility gained by trans...
We introduce an on-line classification algorithm based on the hierarchical partitioning of the featu...
Classification of hyperspectral data is a challenging problem because of large dimensionality of dat...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
textThis research focused on the development of a hierarchical approach for classification that is ...
In a typical supervised classification procedure the availability of training samples has a fundamen...
Classi¯cation of land cover based on hyperspectral data is very challenging because typi-cally tens ...
Supervised learning techniques designed for the situation when the dimensionality exceeds the sample...
Classification problems in remote sensing are often difficult because of high dimensionality of the ...
Domain adaptation techniques aim at adapting a classifier learnt on a source do-main to work on the ...
This thesis concerns the development and mathematical analysis of statistical procedures for classi...
Automatic processing of remotely sensed data has to date been constrained to using training sets to ...
Recent developments in remote sensing allow us to acquire enormous quantities of data via ground-bas...
(a) For high-dimensional inputs, a dimensionality (c.g. UMAP [31], t-SNE, etc.) reduction step is re...
This electronic version was submitted by the student author. The certified thesis is available in th...
An algorithm is presented that predicts the mean recognition accuracy as a function of dimensionalit...
We introduce an on-line classification algorithm based on the hierarchical partitioning of the featu...
Classification of hyperspectral data is a challenging problem because of large dimensionality of dat...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
textThis research focused on the development of a hierarchical approach for classification that is ...
In a typical supervised classification procedure the availability of training samples has a fundamen...
Classi¯cation of land cover based on hyperspectral data is very challenging because typi-cally tens ...
Supervised learning techniques designed for the situation when the dimensionality exceeds the sample...
Classification problems in remote sensing are often difficult because of high dimensionality of the ...
Domain adaptation techniques aim at adapting a classifier learnt on a source do-main to work on the ...
This thesis concerns the development and mathematical analysis of statistical procedures for classi...
Automatic processing of remotely sensed data has to date been constrained to using training sets to ...
Recent developments in remote sensing allow us to acquire enormous quantities of data via ground-bas...
(a) For high-dimensional inputs, a dimensionality (c.g. UMAP [31], t-SNE, etc.) reduction step is re...
This electronic version was submitted by the student author. The certified thesis is available in th...
An algorithm is presented that predicts the mean recognition accuracy as a function of dimensionalit...
We introduce an on-line classification algorithm based on the hierarchical partitioning of the featu...
Classification of hyperspectral data is a challenging problem because of large dimensionality of dat...
Abstract Three different training strategies often used for supervised classification-single pixel, ...