The recent development of more sophisticated remote sensing systems enables the measurement of radiation in many more spectral intervals than previously possible. An example of that technology is the AVIRIS system, which collects image data in 220 bands. As a result of this, new algorithms must be developed in order to analyze the more complex data effectively. Data in a high dimensional space presents a substantial challenge, since intuitive concepts valid in a 2-3 dimensional space to not necessarily apply in higher dimensional spaces. For example, high dimensional space is mostly empty. This results from the concentration of data in the corners of hypercubes. Other examples may be cited. Such observations suggest the need to project data...
Hyper-spectral sensors take measurements in the narrow contiguous bands across the electromagnetic s...
The problem of dimension reduction is introduced as a way to overcome the curse of the dimensionalit...
International audienceVisualization of high-dimensional and possibly complex (non continuous for ins...
Projection Pursuit [7] [10] (PP) techniques are used to search for statistically interesting low-dim...
Dimensionality Reduction (DR) is a commonly used preprocessing technique to reduce data volumes to a...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
The recent development of more sophisticated remote sensing systems enables the measurement of radia...
The work presented here is originally motivated by the low transfer rate possible for earth orbiting...
An important step in multivariate analysis is the dimensionality reduction, which allows for a bette...
In this dissertation, the general problem of the dimensionality reduction of hyperspectral imagery i...
Hyperspectral imagery is often associated with high storage and transmission costs. Dimensionality r...
The Support Vector Machine provides a new way to design classification algorithms which learn from e...
Based on CART, we introduce a recursive partitioning method for high dimensional space which partiti...
This thesis is about dimensionality reduction for hyperspectral data. Special emphasis is given to d...
Random projection for dimensionality reduction of hyperspectral imagery with a goal of target detect...
Hyper-spectral sensors take measurements in the narrow contiguous bands across the electromagnetic s...
The problem of dimension reduction is introduced as a way to overcome the curse of the dimensionalit...
International audienceVisualization of high-dimensional and possibly complex (non continuous for ins...
Projection Pursuit [7] [10] (PP) techniques are used to search for statistically interesting low-dim...
Dimensionality Reduction (DR) is a commonly used preprocessing technique to reduce data volumes to a...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
The recent development of more sophisticated remote sensing systems enables the measurement of radia...
The work presented here is originally motivated by the low transfer rate possible for earth orbiting...
An important step in multivariate analysis is the dimensionality reduction, which allows for a bette...
In this dissertation, the general problem of the dimensionality reduction of hyperspectral imagery i...
Hyperspectral imagery is often associated with high storage and transmission costs. Dimensionality r...
The Support Vector Machine provides a new way to design classification algorithms which learn from e...
Based on CART, we introduce a recursive partitioning method for high dimensional space which partiti...
This thesis is about dimensionality reduction for hyperspectral data. Special emphasis is given to d...
Random projection for dimensionality reduction of hyperspectral imagery with a goal of target detect...
Hyper-spectral sensors take measurements in the narrow contiguous bands across the electromagnetic s...
The problem of dimension reduction is introduced as a way to overcome the curse of the dimensionalit...
International audienceVisualization of high-dimensional and possibly complex (non continuous for ins...