4.4 Article

Fusing diameter distributions predicted by an area-based approach and individual-tree detection in coniferous-dominated forests

Journal

CANADIAN JOURNAL OF FOREST RESEARCH
Volume 50, Issue 2, Pages 113-125

Publisher

CANADIAN SCIENCE PUBLISHING
DOI: 10.1139/cjfr-2019-0102

Keywords

area-based approach; individual-tree detection; multispectral ALS; nearest neighbor imputation; tree size distribution

Categories

Funding

  1. Strategic Research Council of the Academy of Finland [314224]
  2. Finnish Society of Forest Science
  3. Finnish Forest Centre
  4. Strategic Research Council at the Academy of Finland [314224]
  5. Finnish Society of Forest Sciences
  6. Academy of Finland (AKA) [314224, 314224] Funding Source: Academy of Finland (AKA)

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An area-based approach (ABA) is the most common method used to predict forest attributes with airborne laser scanning (ALS) data. Individual-tree detection (ITD) offers an alternative to ABA; however, few studies have examined the selection of these two alternatives for the prediction of diameter distributions. We predicted diameter distributions by applying ABA and ITD in coniferous-dominated boreal forests using ALS data and examined their predictive performance based on the shapes of the diameter distributions (Gaussian, bimodal, and reverse-J). We proposed an ABA-ITD fusion for diameter distribution prediction. Firstly, the fusion was optimized and its potential was evaluated using an error index. Secondly, we offer two alternatives to incorporate the fusion into ALS-based forest inventories. Our results indicate that ITD is more prone to errors than ABA and that the predictive performance of ITD is more sensitive than ABA to the shape of the diameter distribution. The results show that ITD outperforms ABA with Gaussian diameter distributions. In contrast, ABA was seen as preferable to ITD with bimodal- or reverse-J-shaped diameter distributions. The findings indicate that ABA-ITD fusion has potential for predicting diameter distributions, although the predictive capability of ITD is limited compared with that of ABA.

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