Remote Sensing (Nov 2018)

Measuring Landscape Albedo Using Unmanned Aerial Vehicles

  • Chang Cao,
  • Xuhui Lee,
  • Joseph Muhlhausen,
  • Laurent Bonneau,
  • Jiaping Xu

DOI
https://doi.org/10.3390/rs10111812
Journal volume & issue
Vol. 10, no. 11
p. 1812

Abstract

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Surface albedo is a critical parameter in surface energy balance, and albedo change is an important driver of changes in local climate. In this study, we developed a workflow for landscape albedo estimation using images acquired with a consumer-grade camera on board unmanned aerial vehicles (UAVs). Flight experiments were conducted at two sites in Connecticut, USA and the UAV-derived albedo was compared with the albedo obtained from a Landsat image acquired at about the same time as the UAV experiments. We find that the UAV estimate of the visibleband albedo of an urban playground (0.037 ± 0.063, mean ± standard deviation of pixel values) under clear sky conditions agrees reasonably well with the estimates based on the Landsat image (0.047 ± 0.012). However, because the cameras could only measure reflectance in three visible bands (blue, green, and red), the agreement is poor for shortwave albedo. We suggest that the deployment of a camera that is capable of detecting reflectance at a near-infrared waveband should improve the accuracy of the shortwave albedo estimation.

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