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Improving K-Nearest Neighbor Approaches for Density-Based Pixel Clustering in Hyperspectral Remote Sensing Images
by
Chehdi, Kacem
, Cariou, Claude
, Le Moan, Steven
in
Algorithms
/ Clustering
/ clustering methods
/ correlation
/ Datasets
/ Density
/ density estimation
/ deterministic algorithm
/ dimensions
/ Engineering Sciences
/ hyperspectral imagery
/ Hyperspectral imaging
/ Image analysis
/ Image processing
/ Labeling
/ Labels
/ Methods
/ nearest neighbor search
/ Nearest-neighbor
/ Pixels
/ Propagation
/ Regularization
/ Remote sensing
/ unsupervised learning
2020
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Improving K-Nearest Neighbor Approaches for Density-Based Pixel Clustering in Hyperspectral Remote Sensing Images
by
Chehdi, Kacem
, Cariou, Claude
, Le Moan, Steven
in
Algorithms
/ Clustering
/ clustering methods
/ correlation
/ Datasets
/ Density
/ density estimation
/ deterministic algorithm
/ dimensions
/ Engineering Sciences
/ hyperspectral imagery
/ Hyperspectral imaging
/ Image analysis
/ Image processing
/ Labeling
/ Labels
/ Methods
/ nearest neighbor search
/ Nearest-neighbor
/ Pixels
/ Propagation
/ Regularization
/ Remote sensing
/ unsupervised learning
2020
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Do you wish to request the book?
Improving K-Nearest Neighbor Approaches for Density-Based Pixel Clustering in Hyperspectral Remote Sensing Images
by
Chehdi, Kacem
, Cariou, Claude
, Le Moan, Steven
in
Algorithms
/ Clustering
/ clustering methods
/ correlation
/ Datasets
/ Density
/ density estimation
/ deterministic algorithm
/ dimensions
/ Engineering Sciences
/ hyperspectral imagery
/ Hyperspectral imaging
/ Image analysis
/ Image processing
/ Labeling
/ Labels
/ Methods
/ nearest neighbor search
/ Nearest-neighbor
/ Pixels
/ Propagation
/ Regularization
/ Remote sensing
/ unsupervised learning
2020
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Improving K-Nearest Neighbor Approaches for Density-Based Pixel Clustering in Hyperspectral Remote Sensing Images
Journal Article
Improving K-Nearest Neighbor Approaches for Density-Based Pixel Clustering in Hyperspectral Remote Sensing Images
2020
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Overview
We investigated nearest-neighbor density-based clustering for hyperspectral image analysis. Four existing techniques were considered that rely on a K-nearest neighbor (KNN) graph to estimate local density and to propagate labels through algorithm-specific labeling decisions. We first improved two of these techniques, a KNN variant of the density peaks clustering method dpc, and a weighted-mode variant of knnclust, so the four methods use the same input KNN graph and only differ by their labeling rules. We propose two regularization schemes for hyperspectral image analysis: (i) a graph regularization based on mutual nearest neighbors (MNN) prior to clustering to improve cluster discovery in high dimensions; (ii) a spatial regularization to account for correlation between neighboring pixels. We demonstrate the relevance of the proposed methods on synthetic data and hyperspectral images, and show they achieve superior overall performances in most cases, outperforming the state-of-the-art methods by up to 20% in kappa index on real hyperspectral images.
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