Abstract

AbstractThe ability to accurately assess liana (woody vine) infestation at the landscape level is essential to quantify their impact on carbon dynamics and help inform targeted forest management and conservation action. Remote sensing techniques provide potential solutions for assessing liana infestation at broader spatial scales. However, their use so far has been limited to seasonal forests, where there is a high spectral contrast between lianas and trees. Additionally, the ability to align the spatial units of remotely sensed data with canopy observations of liana infestation requires further attention. We combined airborne hyperspectral and LiDAR data with a neural network machine learning classification to assess the distribution of liana infestation at the landscape‐level across an aseasonal primary forest in Sabah, Malaysia. We tested whether an object‐based classification was more effective at predicting liana infestation when compared to a pixel‐based classification. We found a stronger relationship between predicted and observed liana infestation when using a pixel‐based approach (RMSD = 27.0% ± 0.80) in comparison to an object‐based approach (RMSD = 32.6% ± 4.84). However, there was no significant difference in accuracy for object‐ versus pixel‐based classifications when liana infestation was grouped into three classes; Low [0–30%], Medium [31–69%] and High [70–100%] (McNemar’s χ2 = 0.211, P = 0.65). We demonstrate, for the first time, that remote sensing approaches are effective in accurately assessing liana infestation at a landscape scale in an aseasonal tropical forest. Our results indicate potential limitations in object‐based approaches which require refinement in order to accurately segment imagery across contiguous closed‐canopy forests. We conclude that the decision on whether to use a pixel‐ or object‐based approach may depend on the structure of the forest and the ultimate application of the resulting output. Both approaches will provide a valuable tool to inform effective conservation and forest management.

Highlights

  • IntroductionLianas (woody vines) are a dominant plant functional type in tropical forests. Lianas use the structural composition of trees to reach the forest canopy, where they strongly compete with trees for light (Putz, 1984; Schnitzer, 2005)

  • Lianas are a dominant plant functional type in tropical forests

  • Our findings have demonstrated that remote sensing technologies are capable of accurately detecting liana infestation across an aseasonal tropical forest

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Summary

Introduction

Lianas (woody vines) are a dominant plant functional type in tropical forests. Lianas use the structural composition of trees to reach the forest canopy, where they strongly compete with trees for light (Putz, 1984; Schnitzer, 2005). Recent studies have indicated that the presence of lianas may have a strong negative effect on tree diversity (Schnitzer & Carson, 2010), growth (van der Heijden & Phillips, 2009), recruitment (Stevens, 1987; Tymen et al, 2016), survival (Putz, 1984) and the ability of these forests to store and sequester carbon (Duran & Gianoli, 2013; van der Heijden et al, 2015) This is relevant as tropical forests represent around 55% (471 Æ 93 Pg C) of global carbon stocks (Pan et al, 2011) and are highly valued for their role in the a 2021 The Authors. Remote Sensing in Ecology and Conservation published by John Wiley & Sons Ltd on behalf of ZoologicalSociety of London. 1

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