3-D Characterization of Vineyards Using a Novel UAV Imagery-Based OBIA Procedure for Precision Viticulture Applications
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Fields and UAV Flights
2.2. DSM and Orthomosaic Generation
2.3. OBIA Algorithm
- Vine classification: A chessboard segmentation algorithm was used to segment the DSM in square objects of 0.5 m side size (Figure 3). The grid size was based on the common vine row width for trellis system that is around 0.7 m. Most of the objects that covered vine regions also included pixels of bare soil, making the DSM standard deviation (SDDSM) within those objects very large. Thus, the objects with a SDDSM greater than 0.15 m were classified as “vine candidates”. The 0.15 SDDSM value was selected to be well suited for vine detection based on previous studies. The remaining objects were pre-classified as bare soil (Figure 3).The square objects that covered only vine regions had a low SDDSM. To correctly classify them as “vine candidates”, the fact that they were surrounded by “vine candidates” was taken into account and implemented in the OBIA algorithm.Each individual “vine candidates” was automatically analyzed at the pixel level to refine the vine classification. Firstly, the “vine candidates” objects were segmented at the pixel size objects by using the chessboard segmentation process. Next, the algorithm classified every pixel as vineyard or bare soil by comparing their DSM value with that of the surrounding bare soil square (Figure 3). The 0.8 m value was used as suited threshold to accurately classify actual vine objects, based on previous studies, which also avoided misclassification of cover green as vine.The individual analysis of each “vine candidate” showed to be very suitable for vine classification, as only the surrounding soil altitude was taken into account for the discrimination, which could prevent errors due to field slope if the average soil altitude is considered instead. Moreover, using chessboard segmentation instead of the any other segmentation option, such as multi-resolution algorithm, decreases the computational time of the full process, because segmentation is by far the slowest task of the full OBIA procedure [21]. Thus, this configuration consisting of selecting DMS band as the reference for the segmentation instead of the spectral information, and the chessboard segmentation produced a notable increase in the processing speed without penalizing the segmentation accuracy [21].
- Gap detection in vine rows: Once the vines were classified, the gaps into the rows were detected by following four steps: (1) estimation of row orientation; (2) image gridding based on strips following the row orientation; (3) strip classification; and (4) detection of gaps. Firstly, a new level was created above the previous one to calculate the main orientation of the vines and then to generate a mesh of strips of 0.5 width size with the same orientation as the vine row. Then, a looping process was performed until all the strips were analyzed: the strip in the upper level with the higher percentage of vine objects in the lower one, as well as its neighbors strips, were classified as “vine row”; and continuously, the adjacent strips were classified as “no row” to simplify the process.
- 3.
- Computing the vine geometric features: once the gaps into the row were identified, the vine rows were divided into 2 m length objects, which corresponded to each vine based on vine spacing. This parameter is user configurable to adapt the algorithm to different vine spacing. Before vine geometric feature calculation, the height of every pixel was individually obtained by comparing its DSM value (pixel height) to the average DSM value of the surrounding bare soil area. Then, the algorithm automatically calculated the geometric features (width, length and projected area, height and volume) of each vine, as follow: the highest height value of the pixels that composed the vine was selected as the vine height; and the volume was calculated by adding up the volumes (by multiplying the pixel areas and heights) of all the pixels corresponding to the vine. Finally, the geometric features of each vine, as well the identification and location, were automatically exported as vector (e.g., shapefile format) and table (e.g., Excel or ASCII format) files.
2.4. Validation
2.4.1. Grapevine Classification and Gap Detection
2.4.2. Grapevine Height
3. Results and Discussion
3.1. Vine Classification
3.2. Vine Gap Detection
3.3. Vine Height Quantification
3.4. Potential Algorithm Result Applications
4. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Field | Grape Variety | Studied Area (m2) | Central Coordinates (X, Y) |
---|---|---|---|
A | Merlot | 4925 | 291,009 E; 4,613,392 N |
B | Albariño | 4415 | 291,303 E; 4,614,055 N |
C | Chardonnay | 2035 | 290,910 E; 4,616,282 N |
Sensor Size (mm) | Pixel Size (mm) | Sensor Resolution (pixels) | Focal Length (mm) | Radiometric Resolution (bit) | Image Format |
---|---|---|---|---|---|
17.3 × 13.0 | 0.0043 | 4032 × 3024 | 14 | 8 | JPEG |
Preference Setting | Control Parameter | Selected Setting |
---|---|---|
Alignment parameters | Accuracy | High |
pair preselection | Disabled | |
Dense point cloud | Quality | High |
depth filtering | Mild | |
DSM | Coordinate system | WGS84/UTM zone 31 N |
source data | Dense cloud | |
Orthomosaic | Blending mode | Mosaic |
Classified Data | ||||
---|---|---|---|---|
Vineyard | No Vineyard | |||
Manual classification | Vineyard | %VV | %VNV | TR1 |
No vineyard | %NVV | %NVNV | TR2 | |
TC1 | TC2 | TR1 + TR2 = TC1 + TC2 = 100% |
Field | Date | Overall Accuracy (%) | Kappa |
---|---|---|---|
A | July | 95.5 | 0.9 |
September | 95.4 | 0.9 | |
B | July | 95.2 | 0.9 |
September | 96.0 | 0.9 | |
C | July | 93.6 | 0.8 |
September | 96.1 | 0.7 |
Field | Date | True Positive (%) | False Positive (%) | False Negative (%) |
---|---|---|---|---|
A | July | 100.0 | 1.12 | 0.0 |
September | 96.8 | 0.0 | 3.2 | |
B | July | 100.0 | 1.0 | 0.0 |
September | 100.0 | 6.0 | 0.0 | |
C | July | 100.0 | 0.0 | 0.0 |
September | 100.0 | 46.8 | 0.0 |
X Center | Y Center | Length (m) | Width (m) | Area (m2) | Vine Max Height (m) | Vine Mean Height (m) | Vine Volume (m3) |
---|---|---|---|---|---|---|---|
290,909.63 | 4,615,191.17 | 1.36 | 0.48 | 0.51 | 2.02 | 1.49 | 0.76 |
290,909.85 | 4,615,192.23 | 2.06 | 1.41 | 1.93 | 2.13 | 1.33 | 2.56 |
… | … | … | … | … | … | … | … |
290,910.55 | 4,615,194.39 | 2.05 | 1.21 | 1.32 | 2.22 | 1.53 | 2.02 |
290,918.60 | 4,615,225.30 | 2.06 | 1.74 | 2.35 | 2.22 | 1.72 | 4.05 |
290,919.09 | 4,615,227.23 | 2.14 | 1.65 | 2.15 | 2.18 | 1.54 | 3.31 |
290,919.60 | 4,615,229.19 | 2.03 | 1.37 | 1.46 | 2.00 | 1.41 | 2.06 |
290,920.12 | 4,615,231.14 | 2.19 | 1.63 | 2.13 | 2.00 | 1.40 | 2.99 |
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De Castro, A.I.; Jiménez-Brenes, F.M.; Torres-Sánchez, J.; Peña, J.M.; Borra-Serrano, I.; López-Granados, F. 3-D Characterization of Vineyards Using a Novel UAV Imagery-Based OBIA Procedure for Precision Viticulture Applications. Remote Sens. 2018, 10, 584. https://doi.org/10.3390/rs10040584
De Castro AI, Jiménez-Brenes FM, Torres-Sánchez J, Peña JM, Borra-Serrano I, López-Granados F. 3-D Characterization of Vineyards Using a Novel UAV Imagery-Based OBIA Procedure for Precision Viticulture Applications. Remote Sensing. 2018; 10(4):584. https://doi.org/10.3390/rs10040584
Chicago/Turabian StyleDe Castro, Ana I., Francisco M. Jiménez-Brenes, Jorge Torres-Sánchez, José M. Peña, Irene Borra-Serrano, and Francisca López-Granados. 2018. "3-D Characterization of Vineyards Using a Novel UAV Imagery-Based OBIA Procedure for Precision Viticulture Applications" Remote Sensing 10, no. 4: 584. https://doi.org/10.3390/rs10040584