In this paper we compare the quality of three different principle component analysis (PCA) based methods to generate transfer functions for the 3D visualization of imaging spectroscopy data. We discuss three criteria for judging the quality of features in these visualizations. These criteria are used to interpret visualizations of features in the brain of the snail Lymnaea Stagnalis. We show that the PCA method that uses model additional information, clearly results in superior visualizations. KEYWORDS Image processing and analysis, pattern analysis and recognition, transfer function, imaging spectroscopy, principal component analysis and multidimensional. 1
Abstract- Principal component analysis a multivariate statistical data analysis algorithm widely use...
The goal of this work was to develop a technique to enhance contrast within the spectral domain so t...
Spectral datasets of a watch and a fetal hand have been acquired with the energy-resolving 2D X-ray ...
An imaging mass spectrometer is an analytical instrument that can determine the spatial distribution...
The calcium-imaging technique allows us to record movies of brain activity in the antennal lobe of t...
An imaging mass spectrometer is an analytical instrument that can determine the spatial distribution...
Background. The calcium-imaging technique allows us to record movies of brain activity in the antenn...
Astronomy has evolved almost exclusively by the use of spectroscopic and imaging techniques, operate...
Imaging mass spectrometry is an innovative technique that combines high-resolution microscopic imagi...
In 3D wide-field computational microscopy, the image formation process is depth variant due to the r...
Advanced data analysis tools are crucial for the application of ToF-SIMS analysis to biological samp...
An image estimation method based on a principle component analysis (PCA) model for the representatio...
Quality of two linear methods (PCA and LDA) applied to reduce dimensionality of feature analysis is ...
In 1901, Karl Pearson invented Principal Component Analysis (PCA). Since then, PCA serves as a proto...
We present an image-based volume visualization approach based on Principal Component Analysis (PCA)....
Abstract- Principal component analysis a multivariate statistical data analysis algorithm widely use...
The goal of this work was to develop a technique to enhance contrast within the spectral domain so t...
Spectral datasets of a watch and a fetal hand have been acquired with the energy-resolving 2D X-ray ...
An imaging mass spectrometer is an analytical instrument that can determine the spatial distribution...
The calcium-imaging technique allows us to record movies of brain activity in the antennal lobe of t...
An imaging mass spectrometer is an analytical instrument that can determine the spatial distribution...
Background. The calcium-imaging technique allows us to record movies of brain activity in the antenn...
Astronomy has evolved almost exclusively by the use of spectroscopic and imaging techniques, operate...
Imaging mass spectrometry is an innovative technique that combines high-resolution microscopic imagi...
In 3D wide-field computational microscopy, the image formation process is depth variant due to the r...
Advanced data analysis tools are crucial for the application of ToF-SIMS analysis to biological samp...
An image estimation method based on a principle component analysis (PCA) model for the representatio...
Quality of two linear methods (PCA and LDA) applied to reduce dimensionality of feature analysis is ...
In 1901, Karl Pearson invented Principal Component Analysis (PCA). Since then, PCA serves as a proto...
We present an image-based volume visualization approach based on Principal Component Analysis (PCA)....
Abstract- Principal component analysis a multivariate statistical data analysis algorithm widely use...
The goal of this work was to develop a technique to enhance contrast within the spectral domain so t...
Spectral datasets of a watch and a fetal hand have been acquired with the energy-resolving 2D X-ray ...