Title :
Multiset canonical correlations analysis and multispectral, truly multitemporal remote sensing data
Author :
Nielsen, Allan Aasbjerg
Author_Institution :
Informatics & Math., Tech. Univ. Denmark, Lyngby, Denmark
fDate :
3/1/2002 12:00:00 AM
Abstract :
This paper describes two- and multiset canonical correlations analysis (CCA) for data fusion, multisource, multiset, or multitemporal exploratory data analysis. These techniques transform multivariate multiset data into new orthogonal variables called canonical variates (CVs) which, when applied in remote sensing, exhibit ever-decreasing similarity (as expressed by correlation measures) over sets consisting of (1) spectral variables at fixed points in time (R-mode analysis), or (2) temporal variables with fixed wavelengths (T-mode analysis). The CVs are invariant to linear and affine transformations of the original variables within sets which means, for example, that the R-mode CVs are insensitive to changes over time in offset and gain in a measuring device. In a case study, CVs are calculated from Landsat Thematic Mapper (TM) data with six spectral bands over six consecutive years. Both Rand T-mode CVs clearly exhibit the desired characteristic: they show maximum similarity for the low-order canonical variates and minimum similarity for the high-order canonical variates. These characteristics are seen both visually and in objective measures. The results from the multiset CCA R- and T-mode analyses are very different. This difference is ascribed to the noise structure in the data. The CCA methods are related to partial least squares (PLS) methods. This paper very briefly describes multiset CCA-based multiset PLS. Also, the CCA methods can be applied as multivariate extensions to empirical orthogonal functions (EOF) techniques. Multiset CCA is well-suited for inclusion in geographical information systems (GIS)
Keywords :
correlation methods; geographic information systems; image processing; least squares approximations; remote sensing; sensor fusion; vegetation mapping; GIS; Landsat TM data; Landsat-5 Thematic Mapper; R-mode analysis; T-mode analysis; canonical variates; correlation measures; data fusion; empirical orthogonal functions; exploratory data analysis; forest region; geographical information systems; maximum similarity variates; minimum similarity variates; multiset canonical correlations analysis; multisource data analysis; multitemporal data analysis; multivariate multiset data; orthogonal variables; partial least squares methods; remote sensing data; spectral variables; temporal variables; two-set canonical correlations analysis; Constraint optimization; Data analysis; Geographic Information Systems; Geophysical measurements; Information systems; Least squares methods; Remote sensing; Satellites; Time measurement; Wavelength measurement;
Journal_Title :
Image Processing, IEEE Transactions on