SLIC-UAV: A Method for monitoring recovery in tropical restoration
projects through identification of signature species using UAVs
- URL: http://arxiv.org/abs/2006.06624v1
- Date: Thu, 11 Jun 2020 17:22:56 GMT
- Title: SLIC-UAV: A Method for monitoring recovery in tropical restoration
projects through identification of signature species using UAVs
- Authors: Jonathan Williams, Carola-Bibiane Sch\"onlieb, Tom Swinfield, Bambang
Irawan, Eva Achmad, Muhammad Zudhi, Habibi, Elva Gemita, David A. Coomes
- Abstract summary: We present a new pipeline, SLIC-UAV, for processing Unmanned Aerial Vehicle (UAV) imagery to map early-successional species in tropical forests.
The pipeline is novel because it comprises: (a) a time-efficient approach for labelling crowns from UAV imagery; (b) machine learning of species based on spectral and textural features within individual tree crowns, and (c) automatic segmentation of orthomosaiced UAV imagery into'superpixels'
The study demonstrates the power of SLIC-UAV for mapping characteristic early-successional tree species as an indicator of successional stage within tropical forest restoration areas
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Logged forests cover four million square kilometres of the tropics and
restoring these forests is essential if we are to avoid the worst impacts of
climate change, yet monitoring recovery is challenging. Tracking the abundance
of visually identifiable, early-successional species enables successional
status and thereby restoration progress to be evaluated. Here we present a new
pipeline, SLIC-UAV, for processing Unmanned Aerial Vehicle (UAV) imagery to map
early-successional species in tropical forests. The pipeline is novel because
it comprises: (a) a time-efficient approach for labelling crowns from UAV
imagery; (b) machine learning of species based on spectral and textural
features within individual tree crowns, and (c) automatic segmentation of
orthomosaiced UAV imagery into 'superpixels', using Simple Linear Iterative
Clustering (SLIC). Creating superpixels reduces the dataset's dimensionality
and focuses prediction onto clusters of pixels, greatly improving accuracy. To
demonstrate SLIC-UAV, support vector machines and random forests were used to
predict the species of hand-labelled crowns in a restoration concession in
Indonesia. Random forests were most accurate at discriminating species for
whole crowns, with accuracy ranging from 79.3% when mapping five common
species, to 90.5% when mapping the three most visually-distinctive species. In
contrast, support vector machines proved better for labelling automatically
segmented superpixels, with accuracy ranging from 74.3% to 91.7% for the same
species. Models were extended to map species across 100 hectares of forest. The
study demonstrates the power of SLIC-UAV for mapping characteristic
early-successional tree species as an indicator of successional stage within
tropical forest restoration areas. Continued effort is needed to develop
easy-to-implement and low-cost technology to improve the affordability of
project management.
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