| Literature DB >> 31395993 |
James R Kellner1,2, John Armston3, Markus Birrer4, K C Cushman1,2, Laura Duncanson3, Christoph Eck4, Christoph Falleger4, Benedikt Imbach4, Kamil Král5, Martin Krůček5, Jan Trochta5, Tomáš Vrška5, Carlo Zgraggen4.
Abstract
Current and planned space missions will produce aboveground biomass density data products at varying spatial resolution. Calibration and validation of these data products is critically dependent on the existence of field estimates of aboveground biomass and coincident remote sensing data from airborne or terrestrial lidar. There are few places that meet these requirements, and they are mostly in the northern hemisphere and temperate zone. Here we summarize the potential for low-altitude drones to produce new observations in support of mission science. We describe technical requirements for producing high-quality measurements from autonomous platforms and highlight differences among commercially available laser scanners and drone aircraft. We then describe a case study using a heavy-lift autonomous helicopter in a temperate mountain forest in the southern Czech Republic in support of calibration and validation activities for the NASA Global Ecosystem Dynamics Investigation. Low-altitude flight using drones enables the collection of ultra-high-density point clouds using wider laser scan angles than have been possible from traditional airborne platforms. These measurements can be precise and accurate and can achieve measurement densities of thousands of points · m-2. Analysis of surface elevation measurements on a heterogeneous target observed 51 days apart indicates that the realized range accuracy is 2.4 cm. The single-date precision is 2.1-4.5 cm. These estimates are net of all processing artifacts and geolocation errors under fully autonomous flight. The 3D model produced by these data can clearly resolve branch and stem structure that is comparable to terrestrial laser scans and can be acquired rapidly over large landscapes at a fraction of the cost of traditional airborne laser scanning.Entities:
Keywords: Drone; Global Ecosystem Dynamics Investigation (GEDI); Lidar; Remote sensing; UAV
Year: 2019 PMID: 31395993 PMCID: PMC6647463 DOI: 10.1007/s10712-019-09529-9
Source DB: PubMed Journal: Surv Geophys ISSN: 0169-3298 Impact factor: 6.673
Fig. 1The Aeroscout GmbH B100 heavy-lift autonomous helicopter. Components are distinguished in color: flight control system hardware (orange), engine (blue), dual GPS antennas (purple), RIEGL VUX-1 laser scanner (green), GPS-IMU and electrical supply (red). The main rotor is 3.2 m in length, and the aircraft weighs 77 kg with maximum payload
Characteristics of lightweight commercial lidar instruments
| Manufacturer | Model | Weight (kg) | Range accuracy (cm) | Beam divergence (mrad) | Laser Wavelength (nm) | Max. measurement rate (kHz) | No. returns | Max. measurement range (m) | FOV (deg.) |
|---|---|---|---|---|---|---|---|---|---|
| RIEGL | VUX-240 | 3.8 | 2.0 | 0.35 × 0.35 | 1550 | 1500 | Multi | 350 | 75 |
| RIEGL | VUX-1 | 3.5 | 1.0 | 0.5 × 0.5 | 1550 | 500 | Multi | 170 | 330 |
| RIEGL | VUX-1HA | 5.0 | 0.5 | 0.5 × 0.5 | 1550 | 1000 | Multi | 120 | 360 |
| RIEGL | VUX-1LR | 3.5 | 1.5 | 0.5 × 0.5 | 1550 | 750 | Multi | 215 | 330 |
| RIEGL | miniVUX-1 | 1.55 | 1.5 | 1.6 × 0.5 | 905 | 100 | 5 | 150 | 360 |
| Velodyne | VLP-16 | 0.83 | 2.0 | 3.0 × 1.5 | 903 | 600 | 2 | 100 | 360 |
| Velodyne | HDL-32 | 1.0 | 2.0 | 3.0 × 1.5 | 903 | 1390 | 2 | 100 | 360 |
| Ibeo | LUX | 1.0 | 4.0 | 14.0 × 1.4 | 905 | 38 | 3 | 100 | 110 |
Data provided by manufacturers unless otherwise indicated. Maximum measurement range depends on measurement rate and target reflectance. For the RIEGL instruments, the maximum measurement range is at the maximum measurement rate on a 20% reflectance target. For Velodyne and Ibeo instruments, the maximum measurement range is under unspecified conditions. Characteristics for the Ibeo LUX are from Lin et al. (2013)
Fig. 2Operational drone lidar in support of mission science. We collected these data using the Brown Platform for Autonomous Remote Sensing in a temperate beech forest in the southern Czech Republic in April, 2018. Colors indicate elevation (m), and the tallest trees are about 40 m. The white box is 1 by 1 km and equal in size to the GEDI L4B aboveground biomass density data product. White dots are simulated GEDI L4A ground tracks, drawn to scale (22 m footprint diameter, 60 m along-track spacing, 600 m across-track spacing, track inclination is arbitrary). These data were collected in five flight hours using 90 flight lines at 90° angles. Mean point density is 2801 points · m−2. Collecting lidar data at 100 points · m−2 takes about 6 min · km−2 using this platform
The distribution of return numbers (percentages) from airborne laser scans using a low-altitude drone under leaf-off and leaf-on conditions 51 days apart
| First | Second | Third | Fourth | ≥ Fifth | |
|---|---|---|---|---|---|
| Closed forest leaf off | 43.0 | 31.1 | 17.2 | 6.8 | 1.9 |
| Closed forest leaf on | 63.7 | 27.8 | 7.1 | 1.2 | 0.2 |
| Open forest leaf off | 83.2 | 13.6 | 2.8 | 0.4 | 0.0 |
| Open forest leaf on | 86.8 | 11.5 | 1.5 | 0.2 | 0.0 |
The measurements were collected using the Brown Platform for Autonomous Remote Sensing and contrast a closed-canopy old-growth forest dominated by European beech (F. sylvatica) with an open area dominated by Norway spruce (P. abies) and silver fir (A. alba). Higher-order returns occur more frequently in closed-canopy forest due to complex vertical structure. The presence of leaf area reduces return numbers > 3
Fig. 3A high-density digital surface model from drone lidar resolves recently fallen trees. The image is a 5 cm digital surface model and colors indicate sun-shaded intensity. Fallen trees are labeled in red. Tip-up mounds are orange. The white scale bar in the main image is 25 m
Fig. 4Comparison of lidar surface elevation profiles from April 16, 2018 (green points and line) and June 6, 2018 (orange points and line). The profile is 2 cm wide and was extracted from the stem of a fallen tree (labeled A in Fig. 3). The mean difference in elevation between these lines is 2.4 cm. The residual standard error is 4.5 cm in April and 2.1 cm in June
Fig. 5A single European beech (F. sylvatica) in the high-density point cloud acquired by the Brown Platform for Autonomous Remote Sensing. a All returns. b Only returns with 16-bit reflectance intensity > 45,000. The intensity filter removes leaf material and shows branch and stem structure necessary for automated segmentation
Fig. 6Stem and branch structure from high-density lidar acquired by a low-altitude drone. The point density in this scene is 3981 · m−2. Scale varies from this perspective. The length of the white bar is 30 m
Fig. 7The impact of scan angle on measurements of stem and branch structure. The area is the same as Fig. 6. a Only points acquired from absolute scan angles < 10°. b Only points acquired from absolute scan angles > 30°. Most returns from stem and branch positions are from wide scan angles. Scale varies from this perspective. The length of the white bar is 30 m