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Erschienen in: GeoInformatica 4/2020

11.05.2020

A novel spectral–spatial based adaptive minimum spanning forest for hyperspectral image classification

verfasst von: Jing Lv, Huimin Zhang, Ming Yang, Wanqi Yang

Erschienen in: GeoInformatica | Ausgabe 4/2020

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Abstract

The classification methods based on minimum spanning forest (MSF) have yielded impressive results for hyperspectral image. However, previous methods exist several drawbacks, i.e., marker selection methods are easily affected by boundary noise pixels, dissimilarity measure methods between pixels are inaccurate, and also image segmentation process is not robust, since they have not effectively utilized spatial information. To this end, in this paper, novel gradient-based marker selection technique, dissimilarity measures, and adaptive connection weighting method are proposed by making full use of spatial information in hyperspectral image. Concretely, for a given hyperspectral image, a pixel-wise classification is firstly performed, and meanwhile the gradient map is generated by a morphology-based algorithm. Secondly, the most reliable pixels are selected as the markers from the classification map, and then the boundary noise pixels are excluded from the marker map by using the gradient map. Thirdly, several new dissimilarity measures are proposed by incorporating gradient information or probability information of pixels. Furthermore, in the growth procedure of MSF, the connection weighting between pixels is adjusted adaptively to improve the robustness of the MSF algorithm. Finally, when building the final classification map by using the majority voting rule, the labels of the training samples are used to dominate the label prediction. Experimental results are performed on two hyperspectral image sets Indian Pines and University of Pavia with different resolutions and contexts. The proposed approach yields higher classification accuracies compared to previously proposed classification methods, and provides accurate segmentation maps.

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Metadaten
Titel
A novel spectral–spatial based adaptive minimum spanning forest for hyperspectral image classification
verfasst von
Jing Lv
Huimin Zhang
Ming Yang
Wanqi Yang
Publikationsdatum
11.05.2020
Verlag
Springer US
Erschienen in
GeoInformatica / Ausgabe 4/2020
Print ISSN: 1384-6175
Elektronische ISSN: 1573-7624
DOI
https://doi.org/10.1007/s10707-020-00403-0

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