Dominant-feature identification in data from Gaussian processes applied to Finnish forest inventory records
Roman Flury, Tuomas Aakala, Leena Ruha, Timo Kuuluvainen, Reinhard, Furrer

TL;DR
This paper introduces a statistical method to identify and analyze dominant spatial features at different scales in Gaussian process data, applied to Finnish forest inventories to reveal ecological drivers.
Contribution
The paper presents a novel scale-space decomposition method for identifying dominant features in Gaussian process data, applied to Finnish forest records for the first time.
Findings
Identified multiple spatial scales of variation in Finnish forest data.
Revealed effects of edaphic and anthropogenic drivers on tree distribution.
Produced scale-dependent maps of basal area estimates.
Abstract
In spatial data, location-dependent variation leads to connected structures known as features. Variations occur at different spatial scales and possibly originate from distinct underlying processes. Each of these scales is characterized by its own dominant features. Here we introduce a statistical method for identifying these scales and their dominant features in data from Gaussian processes. This identification involves credibly recognizing the dominant features by scale-space decomposition and assessing feature attributes by estimating covariance function parameters of the underlying processes and their associations to potential drivers. We analyze Finnish forest inventory data from the 1920s using this dominant-feature identification method and identify the scales of variation in basal area estimates of most common Finnish trees, including Scots pine, Norway spruce, birch, and other…
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Taxonomy
TopicsForest ecology and management · Remote Sensing and LiDAR Applications · Forest Management and Policy
