Abstract

High spatial resolution three-dimensional (3D) measurements of vegetation by remote sensing are advancing ecological research and environmental management. However, substantial economic and logistical costs limit this application, especially for observing phenological dynamics in ecosystem structure and spectral traits. Here we demonstrate a new aerial remote sensing system enabling routine and inexpensive aerial 3D measurements of canopy structure and spectral attributes, with properties similar to those of LIDAR, but with RGB (red-green-blue) spectral attributes for each point, enabling high frequency observations within a single growing season. This “Ecosynth” methodology applies photogrammetric “Structure from Motion” computer vision algorithms to large sets of highly overlapping low altitude (<130m) aerial photographs acquired using off-the-shelf digital cameras mounted on an inexpensive (<USD$4000), lightweight (<2kg), hobbyist-grade unmanned aerial system (UAS). Ecosynth 3D point clouds with densities of 30–67pointsm−2 were produced using commercial computer vision software from digital photographs acquired repeatedly by UAS over three 6.25ha (250m×250m) Temperate Deciduous forest sites in Maryland USA. Ecosynth point clouds were georeferenced with a precision of 1.2–4.1m horizontal radial root mean square error (RMSE) and 0.4–1.2m vertical RMSE. Understory digital terrain models (DTMs) and canopy height models (CHMs) were generated from leaf-on and leaf-off point clouds using procedures commonly applied to LIDAR point clouds. At two sites, Ecosynth CHMs were strong predictors of field-measured tree heights (R2 0.63 to 0.84) and were highly correlated with a LIDAR CHM (R 0.87) acquired 4days earlier, though Ecosynth-based estimates of aboveground biomass and carbon densities included significant errors (31–36% of field-based estimates). Repeated scanning of a 50m×50m forested area at six different times across a 16 month period revealed ecologically significant dynamics in canopy color at different heights and a structural shift upward in canopy density, as demonstrated by changes in vertical height profiles of point density and relative RGB brightness. Changes in canopy relative greenness were highly correlated (R2=0.87) with MODIS NDVI time series for the same area and vertical differences in canopy color revealed the early green up of the dominant canopy species, Liriodendron tulipifera, strong evidence that Ecosynth time series measurements can capture vegetation structural and spectral phenological dynamics at the spatial scale of individual trees. The ability to observe canopy phenology in 3D at high temporal resolutions represents a breakthrough in forest ecology. Inexpensive user-deployed technologies for multispectral 3D scanning of vegetation at landscape scales (<1km2) heralds a new era of participatory remote sensing by field ecologists, community foresters and the interested public.

Highlights

  • Wind speeds >16 kph generally resulted in incomplete image overlap and the failure of point cloud generation and were avoided

  • Ecosynth canopy height models (CHMs) produced strong predictions of field-measured tree heights at the Knoll and Herbert Run (R2 0.82–0.84, Table 5, Fig. 6), well within the typical range of LIDAR predictions (Andersen et al, 2006; Wang & Glenn, 2008), except when Ecosynth leaf-on digital terrain models (DTMs) were used for CHM generation (R2 0.62–0.67, Table 5)

  • Relatively higher prediction errors may be explained by noting that the best linear regression model, selected based on the highest R2 value, is based off of the 25th percentile (Q-25) canopy height metric, resulting in underestimation of field measured average maximum canopy height and high root mean square error (RMSE) error

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Summary

Introduction

Recent advances in 3D remote sensing have combined 3D measurements with rich spectral information, yielding unprecedented capabilities for observing biodiversity and ecosystem functioning (Asner & Martin, 2009). Remote sensing systems with high temporal resolutions are driving similar advances in understanding ecosystem dynamics of forests locally (Richardson et al, 2009) and globally (Zhang & Goldberg, 2011), including the. We demonstrate an inexpensive user-deployed aerial remote sensing system that enables high spatial resolution 3D multispectral observations of vegetation at high temporal resolutions, and discuss its prospects for advancing the remote sensing of forest structure, function and dynamics

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