DocumentCode :
745101
Title :
Multisource data classification with dependence trees
Author :
Datcu, Mihai ; Melgani, Farid ; Piardi, Andrea ; Serpico, Sebastiano B.
Author_Institution :
German Remote Sensing Data Center, German Aerosp. Center, Oberpfaffenhofen, Germany
Volume :
40
Issue :
3
fYear :
2002
fDate :
3/1/2002 12:00:00 AM
Firstpage :
609
Lastpage :
617
Abstract :
In order to apply a statistical approach to the classification of multisource remote-sensing data, one of the main problems to face lies in the estimation of probability distribution functions. This problem arises out of the difficulty of defining a common statistical model for such heterogeneous data. A possible solution is to adopt nonparametric approaches, which rely on the availability of training samples without any assumption about the related statistical distributions. The purpose of this paper is to investigate the suitability of the concept of dependence trees for the integration of multisource information through estimation of probability distributions. First, this concept, introduced by Chow and Liu (1968), is used to provide an approximation of a probability distribution defined in an N-dimensional space by a product of N-1 probability distributions defined in two-dimensional (2-D) spaces; this approximation corresponds, in terms of graph theoretical interpretation, to a tree of dependence. For each land cover class, a dependence tree is generated by minimizing an appropriate closeness measure. Then, a nonparametric estimation of the second-order probability distributions is carried out through the Parzen window approach, based on the implementation of 2-D Gaussian kernels. In this way, it is possible to reduce the complexity of the estimation, while capturing a significant part of the interdependence among variables. A comparison with other multisource data fusion methods, namely, the multilayer perceptron (MLP) method, the k-nearest neighbor (k-NN) method, and a Bayesian hierarchical classifier (BHC), is made. Experimental results obtained on multisensor [airborne thematic mapper (ATM) and synthetic aperture radar (SAR)] and multisource (experimental synthetic aperture radar (E-SAR) and a textural feature) data sets show that the proposed fusion method based on dependence trees is able to provide a classification accuracy similar to those of the other methods considered, but with the advantage of a reduced computational load
Keywords :
geophysical signal processing; image classification; radar imaging; remote sensing; remote sensing by radar; sensor fusion; statistical analysis; 2-D Gaussian kernels; N-dimensional space; Parzen window approach; classification accuracy; closeness measure; common statistical model; complexity; computational load; dependence trees; fusion method; graph theoretical interpretation; heterogeneous data; land cover class; multisensor data sets; multisource data classification; multisource data sets; multisource remote-sensing data; nonparametric approaches; nonparametric estimation; probability distribution functions; second-order probability distributions; statistical approach; training samples; Bayesian methods; Classification tree analysis; Kernel; Multilayer perceptrons; Probability distribution; Remote sensing; Statistical distributions; Synthetic aperture radar; Tree graphs; Two dimensional displays;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2002.1000321
Filename :
1000321
Link To Document :
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