Visualizing and Quantifying Vineyard Canopy LAI Using an Unmanned Aerial Vehicle (UAV) Collected High Density Structure from Motion Point Cloud
">
<p>The Texas Hill Country American Viticultural Area (THAVA) located in central Texas, west of Austin and northwest of San Antonio. THCAVA wineries are clustered in the eastern portions of the vast viticultural area.</p> ">
<p>The study vineyard blocks, located in the Texas Hill Country American Viticultural Area, are shown outlined in red. The dashed line separates the study blocks. The western block is significantly younger than the eastern block, leading to desirable variation in vine canopy structure and density across the site.</p> ">
<p>The filtered point cloud of ground (gray) and non-ground (orange) points. The SfM method provides accurate visualizations of the study site with the vine rows in the foreground as well as a fence and taller trees in the background.</p> ">
<p>A comparison of an actual UAV captured image (<b>a</b>) and the filtered point cloud (<b>b</b>) for the same area. In (b), ground points are gray and non-ground points are orange. For both (a) and (b), the extent of the study vineyard is shown with a red outline.</p> ">
<p>The density of points (local average number of points per square meter) for both the ground and non-ground is highest in the central and western portions of the vineyard block where the most overlap in UAV images occurred.</p> ">
<p>Three-dimensional visualization of the study vineyard (<b>a</b>–<b>c</b>) including sample vines (red poles) with highlighted sample rows, non-ground point cloud (green spheres), projected trellis wiring (gray lines), and underlying DTM surface. (a) Whole vineyard scale showing GCPs as red squares with inner white circles. (b) Partial-vineyard scale showing the clustering of points representing the individual vine row canopies. (c) Per-vine scale highlights the extraction zones for point inclusion/exclusion (transparent brown) and actual points (green).</p> ">
<p>Three-dimensional visualization of the study vineyard (<b>a</b>–<b>c</b>) including sample vines (red poles) with highlighted sample rows, non-ground point cloud (green spheres), projected trellis wiring (gray lines), and underlying DTM surface. (a) Whole vineyard scale showing GCPs as red squares with inner white circles. (b) Partial-vineyard scale showing the clustering of points representing the individual vine row canopies. (c) Per-vine scale highlights the extraction zones for point inclusion/exclusion (transparent brown) and actual points (green).</p> ">
<p>Canopy density (measured LAI) across the study vineyard blocks. The eastern portion of the vineyard is notably denser, which relates to more mature vines being located there.</p> ">
<p>Scatterplot of LAI predicted with SfM height metrics (Y-axis) and field-measured LAI (X-axis). The line black line indicates the regression fit while the gray line indicates a one-to-one relationship between observed and predicted LAI.</p> ">
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Site
2.2. Data Collection
2.3. Data Processing
2.4. Data Analysis
3. Results
3.1. SfM Results and Point Cloud Visualization
3.2. Relationship between SfM Output and LAI
4. Discussion
4.1. General Study Limitations
4.2. SfM as an Alternative Source of High-Density 3D Data
4.3. SfM LAI Estimates Compared to Lidar and Spectral-Based Approaches
4.4. Potential of SfM as a Source of 3D Data for LAI Estimation
5. Conclusions
Acknowledgments
References
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Total Images | Discarded Images | Input Images | Entire Point Cloud | Noise Removed | Classified | |
---|---|---|---|---|---|---|
Ground | Non-Ground | |||||
206 | 5 | 201 | 462,959 | 30,775 | 333,835 | 98,349 |
100.0% | 2.4% | 97.6% | 100.0% | 6.7% | 72.1% | 21.2% |
R2: 0.567 | R2 Adj.: 0.495 | RMSE: 0.236, n: 44 | F Ratio: 7.86 | p < 0.0001 | ||||
---|---|---|---|---|
Term | Estimate | Standard Error | t Ratio | Prob > |t|, α = 0.05 |
Intercept | 4.61 | 0.979 | 4.71 | <0.001 |
Var | 4.77 | 1.97 | 2.42 | 0.020 |
CV | −5.05 | 1.58 | −3.19 | 0.003 |
Per5 | −2.91 | 0.565 | −5.16 | <0.001 |
Per9 | 1.85 | 0.422 | 1.38 | <0.001 |
Per10-5 | −0.716 | 0.289 | −2.48 | 0.018 |
RatioPer6 | −2.45 | 0.996 | −2.51 | 0.017 |
= 4.61 + (4.77 × Var) − (5.05 × CV) − (2.91 × Per5) + (1.85 × Per9) − (0.716 × Per10-5) − (2.45 × RatioPer6) |
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Mathews, A.J.; Jensen, J.L.R. Visualizing and Quantifying Vineyard Canopy LAI Using an Unmanned Aerial Vehicle (UAV) Collected High Density Structure from Motion Point Cloud. Remote Sens. 2013, 5, 2164-2183. https://doi.org/10.3390/rs5052164
Mathews AJ, Jensen JLR. Visualizing and Quantifying Vineyard Canopy LAI Using an Unmanned Aerial Vehicle (UAV) Collected High Density Structure from Motion Point Cloud. Remote Sensing. 2013; 5(5):2164-2183. https://doi.org/10.3390/rs5052164
Chicago/Turabian StyleMathews, Adam J., and Jennifer L. R. Jensen. 2013. "Visualizing and Quantifying Vineyard Canopy LAI Using an Unmanned Aerial Vehicle (UAV) Collected High Density Structure from Motion Point Cloud" Remote Sensing 5, no. 5: 2164-2183. https://doi.org/10.3390/rs5052164
APA StyleMathews, A. J., & Jensen, J. L. R. (2013). Visualizing and Quantifying Vineyard Canopy LAI Using an Unmanned Aerial Vehicle (UAV) Collected High Density Structure from Motion Point Cloud. Remote Sensing, 5(5), 2164-2183. https://doi.org/10.3390/rs5052164