4.1 Article

Detection of aspen in conifer-dominated boreal forests with seasonal multispectral drone image point clouds

期刊

SILVA FENNICA
卷 55, 期 4, 页码 -

出版社

FINNISH SOC FOREST SCIENCE-NATURAL RESOURCES INST FINLAND
DOI: 10.14214/sf.10515

关键词

Populus tremula; deciduous trees; mixed forest; protected areas; tree species classification; unmanned aerial vehicles

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资金

  1. Maj and Tor Nessling foundation (AAH) [201700566]
  2. Strategic Research Council at the Academy of Finland [312559]
  3. Academy of Finland Flagship Programme (Forest-Human-Machine Interplay - Building Resilience, Redefining Value Networks and Enabling Meaningful Experiences (UNITE)) [337127]

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The study found that using multispectral drone images in spring for tree species classification can achieve highly accurate results, but the temporal variation in leaf and canopy appearance can significantly alter the detection accuracy.
Current remote sensing methods can provide detailed tree species classification in boreal forests. However, classification studies have so far focused on the dominant tree species, with few studies on less frequent but ecologically important species. We aimed to separate European aspen (Populus tremula L.), a biodiversity-supporting tree species, from the more common species in European boreal forests (Pinus sylvestris L., Picea abies [L.] Karst., Betula spp.). Using multispectral drone images collected on five dates throughout one thermal growing season (May-September), we tested the optimal season for the acquisition of mono-temporal data. These images were collected from a mature, unmanaged forest. After conversion into photogrammetric point clouds, we segmented crowns manually and automatically and classified the species by linear discriminant analysis. The highest overall classification accuracy (95%) for the four species as well as the highest classification accuracy for aspen specifically (user's accuracy of 97% and a producer's accuracy of 96%) were obtained at the beginning of the thermal growing season (13 May) by manual segmentation. On 13 May, aspen had no leaves yet, unlike birches. In contrast, the lowest classification accuracy was achieved on 27 September during the autumn senescence period. This is potentially caused by high intraspecific variation in aspen autumn coloration but may also be related to our date of acquisition. Our findings indicate that multispectral drone images collected in spring can be used to locate and classify less frequent tree species highly accurately. The temporal variation in leaf and canopy appearance can alter the detection accuracy considerably.

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