Title :
Feature Extraction in Remote Sensing High-Dimensional Image Data
Author :
Zortea, Maciel ; Haertel, Victor ; Clarke, Robin
Author_Institution :
Univ. Fed. do Rio Grande do Sul, Porto Alegre
Abstract :
High-dimensional image data open new possibilities in remote sensing digital image classification, particularly when dealing with classes that are spectrally very similar. The main problem refers to the estimation of a large number of classifier´s parameters. One possible solution to this problem consists in reducing the dimensionality of the original data without a significant loss of information. In this letter, a new approach to reduce data dimensionality is proposed. In the proposed methodology, each pixel´s curve of spectral response is initially segmented, and the digital numbers (DNs) at each segment are replaced by a smaller number of statistics. In this letter, the proposed statistics are the mean and variance of the segment´s DNs, which are supposed to carry information about the segment´s position and shape, respectively. Tests were performed by using Airborne Visible/Infrared Imaging Spectrometer hyperspectral image data. The experiments have shown that this methodology is capable of providing very acceptable results, in addition of being computationally efficient
Keywords :
data reduction; feature extraction; geophysical techniques; geophysics computing; remote sensing; Airborne Visible/ Infrared Imaging Spectrometer hyperspectral image; data dimensionality reduction; digital image classification; high-dimensional image; pixel spectral response curve; remote sensing; Digital images; Feature extraction; Image segmentation; Infrared imaging; Infrared spectra; Performance evaluation; Remote sensing; Shape; Statistics; Testing; Feature extraction; feature reduction; high-dimensional image data;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2006.886429