2008
DOI: 10.1109/tgrs.2008.916201
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Kernel-Based Framework for Multitemporal and Multisource Remote Sensing Data Classification and Change Detection

Abstract: The multitemporal classification of remote sensing images is a challenging problem, in which the efficient combination of different sources of information (e.g., temporal, contextual, or multisensor) can improve the results. In this paper, we present a general framework based on kernel methods for the integration of heterogeneous sources of information. Using the theoretical principles in this framework, three main contributions are presented. First, a novel family of kernel-based methods for multitemporal cla… Show more

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Cited by 337 publications
(182 citation statements)
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“…The most successful kernel method are the support vector machines as extensively reported in [6]. SVMs have been applied to both multispectral [22,23] and hyperspectral [6,24,9] data in a wide range of domains, including object recognition [25], land cover and multi-temporal classification [26,27,9], and urban monitoring [28].…”
Section: Kernel Methods In Remote Sensing Data Classificationmentioning
confidence: 99%
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“…The most successful kernel method are the support vector machines as extensively reported in [6]. SVMs have been applied to both multispectral [22,23] and hyperspectral [6,24,9] data in a wide range of domains, including object recognition [25], land cover and multi-temporal classification [26,27,9], and urban monitoring [28].…”
Section: Kernel Methods In Remote Sensing Data Classificationmentioning
confidence: 99%
“…This method is a recent kernel-based development that only considers samples belonging to the class of interest in order to learn the underlying data class distribution. The method was originally introduced for anomaly detection [7], then analyzed for dealing with incomplete and unreliable training data [8], and recently reformulated for change detection [9].…”
Section: Classification With Kernelsmentioning
confidence: 99%
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“…To avoid working in the potentially high-dimensional space, the dot product can be evaluated directly using a nonlinear function in input space by means of the kernel trick (Camps-Valls et al, 2008). Every function that meets the Mercer's condition can be used as a kernel function.…”
Section: Kernel Principalsmentioning
confidence: 99%
“…The main idea of using a kernel function in the similarity criteria is to compute the distance between pixels in feature space (Camps-Valls et al, 2008). Feature space due to its inherent properties enable us to clustering nonlinear datasets simpler and more efficient.…”
Section: Kernel-based Fuzzy C-means Algorithmmentioning
confidence: 99%