2017
DOI: 10.5201/ipol.2017.204
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Hyperspectral Image Classification Using Graph Clustering Methods

Abstract: Hyperspectral imagery is a challenging modality due to the dimension of the pixels which can range from hundreds to over a thousand frequencies depending on the sensor. Most methods in the literature reduce the dimension of the data using a method such as principal component analysis, however this procedure can lose information. More recently methods have been developed to address classification of large datasets in high dimensions. This paper presents two classes of graph-based classification methods for hype… Show more

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Cited by 38 publications
(35 citation statements)
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“…This is a standard problem in machine learning. Recently, novel algorithms have been proposed [1] that are motivated by PDE-based image segmentation methods and are modified to apply to discrete data sets [4]. Serial results show that these algorithms improve both accuracy of solution and efficiency of the computation and can be potentially faster in parallel than various classification algorithms such as spectral clustering with k-means [6].…”
Section: Introductionmentioning
confidence: 99%
“…This is a standard problem in machine learning. Recently, novel algorithms have been proposed [1] that are motivated by PDE-based image segmentation methods and are modified to apply to discrete data sets [4]. Serial results show that these algorithms improve both accuracy of solution and efficiency of the computation and can be potentially faster in parallel than various classification algorithms such as spectral clustering with k-means [6].…”
Section: Introductionmentioning
confidence: 99%
“…In this model each data point is represented by a vertex of the graph while the similarity between two data points is represented by a weighted edge connecting the respective vertices. For details on data analysis using finite weighted graphs we Figure 3 for the individual eigenfunctions refer to [9,12]. In the literature it is well-known that there exists a strong mathematical relationship between spectral clustering and various minimum graph cut problems.…”
Section: Spectral Clustering With Extinction Profilesmentioning
confidence: 99%
“…After determining the eigenvectors of L one performs the actual clustering, e.g., via a standard k-means algorithm or simple thresholding. Note that in various applications a spectral clustering based on solely one eigenvector, i.e., the corresponding eigenvector of the second-smallest eigenvalue, already yields interesting results, e.g., for image segmentation [12]. On the other hand, due to the linear nature of the graph Laplacian this approach is rather restricted in many real world applications.…”
Section: Spectral Clustering With Extinction Profilesmentioning
confidence: 99%
“…However, the different clusters in the datacorresponding to regions with distinct material propertiesoften exhibit low-dimensional, though nonlinear, structure. In order to efficiently exploit this structure, methods for clustering HSI that learn the underlying nonlinear geometry have been developed, including methods based on non-negative matrix factorization [5], regularized graph Laplacians [6], angle distances [7], and deep neural networks [8].…”
Section: Introductionmentioning
confidence: 99%