Monitoring restored tropical forest diversity and structure through UAV-borne hyperspectral and lidar fusion

de Almeida, Danilo Roberti Alves; Broadbent, Eben North; Ferreira, Matheus Pinheiro; Meli, Paula; Zambrano, Angelica Maria Almeyda; Gorgens, Eric Bastos; Resende, Angelica Faria; de Almeida, Catherine Torres; do Amaral, Cibele Hummel; Corte, Ana Paula Dalla; Silva, Carlos Alberto; Romanelli, Joao P.; Prata, Gabriel Atticciati; Papa, Daniel de Almeida; Stark, Scott C.; et. al.

Abstract

Remote sensors, onboard orbital platforms, aircraft, or unmanned aerial vehicles (UAVs) have emerged as a promising technology to enhance our understanding of changes in ecosystem composition, structure, and function of forests, offering multi-scale monitoring of forest restoration. UAV systems can generate highresolution images that provide accurate information on forest ecosystems to aid decision-making in restoration projects. However, UAV technological advances have outpaced practical application; thus, we explored combining UAV-borne lidar and hyperspectral data to evaluate the diversity and structure of restoration plantings. We developed novel analytical approaches to assess twelve 13-year-old restoration plots experimentally established with 20, 60 or 120 native tree species in the Brazilian Atlantic Forest. We assessed (1) the congruence and complementarity of lidar and hyperspectral-derived variables, (2) their ability to distinguish tree richness levels and (3) their ability to predict aboveground biomass (AGB). We analyzed three structural attributes derived from lidar data-canopy height, leaf area index (LAI), and understory LAI-and eighteen variables derived from hyperspectral data-15 vegetation indices (VIs), two components of the minimum noise fraction (related to spectral composition) and the spectral angle (related to spectral variability). We found that VIs were positively correlated with LAI for low LAI values, but stabilized for LAI greater than 2 m2/m2. LAI and structural VIs increased with increasing species richness, and hyperspectral variability was significantly related to species richness. While lidar-derived canopy height better predicted AGB than hyperspectral-derived VIs, it was the fusion of UAV-borne hyperspectral and lidar data that allowed effective co-monitoring of both forest structural attributes and tree diversity in restoration plantings. Furthermore, considering lidar and hyperspectral data together more broadly supported the expectations of biodiversity theory, showing that diversity enhanced biomass capture and canopy functional attributes in restoration. The use of UAV-borne remote sensors can play an essential role during the UN Decade of Ecosystem Restoration, which requires detailed forest monitoring on an unprecedented scale.

Más información

Título según WOS: ID WOS:000688396000003 Not found in local WOS DB
Título de la Revista: REMOTE SENSING OF ENVIRONMENT
Volumen: 264
Editorial: Elsevier Science Inc.
Fecha de publicación: 2021
DOI:

10.1016/j.rse.2021.112582

Notas: ISI