Publication Details

Category Text Publication
Reference Category Journals
DOI 10.3390/rs6086988
Title (Primary) Using unmanned aerial vehicles (UAV) to quantify spatial gap patterns in forests
Author Getzin, S.; Nuske, R.S.; Wiegand, K.
Source Titel Remote Sensing
Year 2014
Department OESA
Volume 6
Issue 8
Page From 6988
Page To 7004
Language englisch
Keywords autonomous flying; biodiversity; canopy gaps; drone; polygon-based pair correlation function; remotely piloted vehicles; RPV; unmanned aircraft systems; UAS; UAV
UFZ wide themes RU5;
Abstract Gap distributions in forests reflect the spatial impact of man-made tree harvesting or naturally-induced patterns of tree death being caused by windthrow, inter-tree competition, disease or senescence. Gap sizes can vary from large (>100 m2) to small (<10 m2), and they may have contrasting spatial patterns, such as being aggregated or regularly distributed. However, very small gaps cannot easily be recorded with conventional aerial or satellite images, which calls for new and cost-effective methodologies of forest monitoring. Here, we used an unmanned aerial vehicle (UAV) and very high-resolution images to record the gaps in 10 temperate managed and unmanaged forests in two regions of Germany. All gaps were extracted for 1-ha study plots and subsequently analyzed with spatially-explicit statistics, such as the conventional pair correlation function (PCF), the polygon-based PCF and the mark correlation function. Gap-size frequency was dominated by small gaps of an area <5 m2, which were particularly frequent in unmanaged forests. We found that gap distances showed a variety of patterns. However, the polygon-based PCF was a better descriptor of patterns than the conventional PCF, because it showed randomness or aggregation for cases when the conventional PCF showed small-scale regularity; albeit, the latter was only a mathematical artifact. The mark correlation function revealed that gap areas were in half of the cases negatively correlated and in the other half independent. Negative size correlations may likely be the result of single-tree harvesting or of repeated gap formation, which both lead to nearby small gaps. Here, we emphasize the usefulness of UAV to record forest gaps of a very small size. These small gaps may originate from repeated gap-creating disturbances, and their spatial patterns should be monitored with spatially-explicit statistics at recurring intervals in order to further insights into forest dynamics.
Persistent UFZ Identifier
Getzin, S., Nuske, R.S., Wiegand, K. (2014):
Using unmanned aerial vehicles (UAV) to quantify spatial gap patterns in forests
Remote Sens. 6 (8), 6988 - 7004 10.3390/rs6086988