Remote Sensing (Mar 2022)

Early Detection of <i>Dendroctonus valens</i> Infestation with Machine Learning Algorithms Based on Hyperspectral Reflectance

  • Bingtao Gao,
  • Linfeng Yu,
  • Lili Ren,
  • Zhongyi Zhan,
  • Youqing Luo

DOI
https://doi.org/10.3390/rs14061373
Journal volume & issue
Vol. 14, no. 6
p. 1373

Abstract

Read online

The red turpentine beetle (Dendroctonus valens LeConte) has caused severe ecological and economic losses since its invasion into China. It gradually spreads northeast, resulting in many Chinese pine (Pinus tabuliformis Carr.) deaths. Early detection of D. valens infestation (i.e., at the green attack stage) is the basis of control measures to prevent its outbreak and spread. This study examined the changes in spectral reflectance after initial attacking of D. valens. We also explored the possibility of detecting early D. valens infestation based on spectral vegetation indices and machine learning algorithms. The spectral reflectance of infested trees was significantly different from healthy trees (p p 2, D735, SR1, NSMI, RNIR•CRI550 and RVSI) were sensitive indicators for the early detection of D. valens damage. Our results demonstrate that remote sensing technology could be successfully applied to early detect D. valens infestation and clarify the sensitive spectral regions and vegetation indices, which has important implications for early detection based on unmanned airborne vehicle and satellite data.

Keywords