Conference paper
Change detection by the IR-MAD and kernel MAF methods in Landsat TM data covering a Swedish forest region
National Space Institute, Technical University of Denmark1
Geodesy, National Space Institute, Technical University of Denmark2
Department of Informatics and Mathematical Modeling, Technical University of Denmark3
Image Analysis and Computer Graphics, Department of Informatics and Mathematical Modeling, Technical University of Denmark4
Lund University5
Change over time between two 512 by 512 (25 m by 25 m pixels) multispectral Landsat Thematic Mapper images dated 6 June 1986 and 27 June 1988 respectively covering a forested region in northern Sweden, is here detected by means of the iteratively reweighted multivariate alteration detection (IR-MAD) method followed by post-processing by means of kernel maximum autocorrelation factor (kMAF) analysis.
The IR-MAD method builds on an iterated version of an established method in multivariate statistics, namely canonical correlation analysis (CCA). It finds orthogonal (i.e., uncorrelated) linear combinations of the multivariate data at two time points that have maximal correlation. These linear combinations are called the canonical variates (CV) and the corresponding correlations are called the canonical correlations.
There is one set of CVs for each time point. The difference between the two set of CVs represent the change between the two time points and are called the MAD variates or the MADs for short. The MAD variates are invariant to linear and affine transformations of the original data. The sum of the squared MAD variates (properly normed to unit variance) gives us change variables that will ideally follow a so-called c2 (chi-squared) distribution with p degrees of freedom for the no-change pixels; p is the number of spectral bands in the image data.
Here p=6, the thermal band is excluded from the analyses. The c2 image is the basis for calculating an image of probability for no-change, i.e., the probability for finding a higher value of the c2 statistic than the one actually found. This image is the weight image in the iteration scheme mentioned above.
Iterations stop when the canonical correlations stop changing. Principal component analysis (PCA) finds orthogonal (i.e., uncorrelated) linear combinations of the multivariate data that have maximal variance. A kernel version of PCA is based on a dual formulation also termed Q-mode analysis in which the data enter into the analysis via inner products in the so-called Gram matrix only.
In the kernel version the inner products are replaced by inner products between nonlinear mappings into higher dimensional feature space of the original data. Via kernel substitution also known as the kernel trick these inner products between the mappings are in turn replaced by a kernel function and all quantities needed in the analysis are expressed in terms of this kernel function.
This kernel version may be thought of as a nonlinear version of PCA. Maximum autocorrelation factor (MAF) analysis finds orthogonal (i.e., uncorrelated) linear combinations of the multivariate data that have maximal autocorrelation. This type of analysis can be kernelized in a fashion similar to kernel PCA.
In both simple difference images, IR-MAD images and kernel MAF images grayish colours indicate no change, saturated colours indicate change. The kMAF transformation focuses on extreme observations, here the change pixels, and adapt to a varying multivariate background, here the no-change pixels.
Language: | English |
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Year: | 2010 |
Pages: | 167-168 |
Proceedings: | Conference on Spatial Application Tools in Forestry |
ISBN: | 8469356003 and 9788469356005 |
Types: | Conference paper |
ORCIDs: | Nielsen, Allan Aasbjerg |