4.1 Article

Detection of Root, Butt, and Stem Rot presence in Norway spruce with hyperspectral imagery

期刊

SILVA FENNICA
卷 56, 期 2, 页码 -

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FINNISH SOC FOREST SCIENCE-NATURAL RESOURCES INST FINLAND
DOI: 10.14214/sf.10606

关键词

Picea abies; Heterobasidion; hyperspectral imagery; forest pathology; remote sens-root rot

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资金

  1. Research Council of Norway under the project PRECISION [281140]

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This study aimed to use remote sensing to detect rot in spruce forests in Norway. The results indicate that an airborne hyperspectral imager can accurately classify the presence or absence of rot in a single-tree-based framework.
Pathogenic wood decay fungi such as species of Heterobasidion are some of the most serious forest pathogens in Europe, causing rot of tree boles and loss of growth, with estimated economic losses of eight hundred million euros per year. In conifers with low resinous heartwood such as species of Picea and Abies, these fungi are commonly confined to heartwood and thus external infection signs on the bark or foliage of trees are normally absent. Consequently, determining the extent of disease presence in a forest stand with field surveys is not practical for guiding forest management decisions such as optimal rotation time. Remote sensing technologies such as air-borne laser scanning and aerial imagery are already used to reduce the reliance on fieldwork in forest inventories. This study aimed to use remote sensing to detect rot in spruce (Picea abies L. Karst.) forests in Norway. An airborne hyperspectral imager provided information for clas-sifying the presence or absence of rot in a single-tree-based framework. Ground reference data showing the presence of rot were collected by harvest machine operators during the harvest of forest stands. Random forest and support vector machine algorithms were used to classify the presence and absence of rot. Results indicate a 64% overall classification accuracy for presence -absence classification of rot, although additional work remains to make the classifications usable for practical forest management.

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