Abstract

Vitality loss of trees caused by extreme weather conditions, drought stress or insect infestations, are expected to increase with ongoing climate change. The detection of vitality loss at an early stage is thus of vital importance for forestry and forest management to minimize ecological and economical damage. Remote sensing instruments are able to detect changes over large areas down to the level of individual trees. The scope of our study is to investigate whether it is possible to detect stress-related spectral changes at an early stage using hyperspectral sensors. For this purpose, two Norway spruce (Picea abies) forest stands, both different in age and maintenance, were monitored in the field over two vegetation periods. In parallel, time series of airborne hyperspectral remote sensing data were acquired. For each stand 70 trees were artificially stressed (ring-barked) and 70 trees were used as control trees. The data collected in south-eastern Germany consists of measurements at multiple times and at different scales: (1) crown conditions were visually assessed in the field (2) needle reflectance spectra were acquired in the laboratory using a FieldSpec spectrometer, and (3) hyperspectral airborne data (HySpex) were flown at 0.5 m spatial resolution. We aimed for a simultaneous data acquisition at the three levels. This unique data set was investigated whether any feature can be discriminated to detect vitality loss in trees at an early stage. Several spectral transformations were applied to the needle and tree crown spectra, such as spectral derivatives, vegetation indices and angle indices. All features were examined for their separability (ring-barked vs. control trees) with the Random Forest (RF) classification algorithm. As result, the younger, well maintained forest stand only showed minor changes over the 2-year period, whereas changes in the older forest stand were observable both in the needle and in the hyperspectral tree crown spectra, respectively. These changes could even be detected before changes were visible by field observations. The tree spectral reactions to ring-barking were first noticeable 11 months after ring-barking and 6 weeks before they were visible by field inspection. The most discriminative features for separating the two groups were the reflectance spectra and the spectral derivatives, over the VIs or angle indices. The tree crown spectra of the two groups could be separated by the RF classifier with a 79% overall accuracy at the beginning of the second vegetation period and 1 month later with 92% overall accuracy with high kappa index. The results clearly demonstrate the great potential of hyperspectral remote sensing in detecting early vitality changes of stressed trees.

Highlights

  • Natural disturbances, such as fires, insect outbreaks and wind­ throws, play an important role in forest ecosystems with major ecological as well as economic impacts

  • The two forest stands grow under very similar site condi­ tions, they reacted differently to ring-barking

  • The hyperspectral data used in this study have a high potential for the detection of subtle changes in the reflection behavior of stressed trees

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Summary

Introduction

Natural disturbances, such as fires, insect outbreaks and wind­ throws, play an important role in forest ecosystems with major ecological as well as economic impacts. Earth observation (EO) can make a significant and cost-efficient contribution in this area as it can provide spatially accurate and yet large-scale information on the extent of the disturbances quickly after the event. The well-known potential of EO has led to an increased use of various remote sensing platforms and sensors for the detection of forest disturbances, summarized in several review studies (Atzberger et al, 2020; Lausch et al, 2017, 2016; Rullan-Silva et al, 2013; Senf et al, 2017)

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