Advances in the Application of Small Unoccupied Aircraft Systems (sUAS) for High-Throughput Plant Phenotyping
Abstract
:1. Introduction
Literature Survey
2. Common sUAS-Based Imaging Techniques in HTPP
2.1. Color Imaging
2.2. Thermal Imaging
2.3. Imaging Spectroscopy
2.4. Light Detection and Ranging (LiDAR) Imaging
3. sUAS-Based Image Processing and Data Analysis
4. Common sUAS-Based Trait Extraction for HTPP
4.1. Plant Growth
Crop | Sensor | Traits | ||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
RGB | Multi-Spectral | Hyper-Spectral | Thermal | LiDAR | Plant Height | Canopy Cover | Leaf Area Index | Biomass | Salinity Stress | Drought Stress | Nutrient Stress | NUE, WUE | Diseases | Yield | Veg. Index | Other Traits | Source | |
Soybean | X | X | X | Borra-Serrano et al. [69] | ||||||||||||||
X | X | X | X | X | Maimaitijiang et al. [50] | |||||||||||||
X | X | Sagan et al. [55] | ||||||||||||||||
Corn | X | X | X | X | X | Su et al. [122] | ||||||||||||
X | X | X | X | X | Yang et al. [123] | |||||||||||||
X | X | X | X | X | Han et al. [85] | |||||||||||||
X | X | Wang et al. [135] | ||||||||||||||||
X | X | Chivasa et al. [49] | ||||||||||||||||
X | X | Stewart et al. [136] | ||||||||||||||||
Cotton | X | X | X | X | Xu et al. [52] | |||||||||||||
X | X | Thompson et al. [53] | ||||||||||||||||
X | X | X | X | X | Xu et al. [52] | |||||||||||||
X | X | Thorp et al. [4] | ||||||||||||||||
Wheat | X | X | Yang et al. [86] | |||||||||||||||
X | X | Perich et al. [111] | ||||||||||||||||
X | Moghimi et al. [56] | |||||||||||||||||
X | X | X | X | Gracia-Romero et al. [137] | ||||||||||||||
X | X | Sankaran et al. [125] | ||||||||||||||||
X | X | Camino et al. [138] | ||||||||||||||||
Wheat | X | X | X | Gonzalez-Dugo et al. [139] | ||||||||||||||
X | X | X | Ostos-Garrido et al. [57] | |||||||||||||||
Sorghum | X | X | Hu et al. [124] | |||||||||||||||
X | X | Sagan et al. [55] | ||||||||||||||||
Barley | X | X | X | Ostos-Garrido et al. [57] | ||||||||||||||
X | X | X | X | Kefauver et al. [110] | ||||||||||||||
Dry bean | X | X | X | Sankaran et al. [51] | ||||||||||||||
X | X | X | Sankaran et al. [134] | |||||||||||||||
Rice | X | X | X | X | X | Fenghua et al. [70] | ||||||||||||
Potato | X | X | Sugiura et al. [140] | |||||||||||||||
Blueberry | X | X | X | Patrick and Li [121] | ||||||||||||||
Peanut | X | X | Patrick et al. [141] | |||||||||||||||
Citrus | X | X | X | Ampatzidis and Patel [87] | ||||||||||||||
Tomato | X | X | X | Johansen et al. [142] | ||||||||||||||
Sugar beet | X | X | X | Harkel et al. [106] | ||||||||||||||
Bioenergy crop | X | X | X | Maesano et al. [102] |
4.2. Abiotic Stress Resilience and Adaptation
4.3. Nutrient- and Water-Use Efficiencies and Crop Yield
4.4. Disease Detection and Crop Resilience to Biotic Stress
4.5. Other Areas of Application
5. Comparing Crop Trait Estimation from Imaging Sensors on Terrestrial versus sUAS Platforms
5.1. Plant Height Estimation
5.2. Canopy Cover and Leaf Area Index
5.3. Biomass
5.4. Yield Estimation
6. Suggested Directions for Future Research
7. Discussion
8. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Journals | Number of Publications | Percentage of Total Publication |
---|---|---|
Remote Sensing | 59 | 29 |
Frontiers in Plant Science | 25 | 12 |
Computers and Electronics in Agriculture | 20 | 10 |
Field Crops Research | 12 | 6 |
Plant Methods | 11 | 5 |
Sensors | 9 | 4 |
Journal of Experimental Botany | 8 | 4 |
Agronomy-Basel | 5 | 2 |
ISPRS Journal of Photogrammetry and Remote Sensing | 4 | 2 |
Remote Sensing of Environment | 4 | 2 |
IEEE Access | 4 | 2 |
PLOS One | 3 | 1 |
Scientific Reports | 3 | 1 |
Precision Agriculture | 3 | 1 |
Others | 35 | 17 |
Total | 205 | 100 |
Crop Phenotype or Trait | HTPP Platform | Crop | Sensor | Evaluation Method | Reference | ||
---|---|---|---|---|---|---|---|
r2 | RMSE | Accuracy | |||||
Plant height | Aerial (sUAS) | Cotton | RGB | 0.98 | [53] | ||
Multispectral | 0.90–0.96 | 5.50–10.10% | [52] | ||||
0.78 | [122] | ||||||
Soybean | RGB | 0.70 | [69] | ||||
>0.70 | [69] | ||||||
Maize | RGB | 0.78 | 0.168 | [122] | |||
0.95 | [135] | ||||||
Rice | 0.71 | [54] | |||||
Sorghum | RGB | 0.57–0.62 | [149] | ||||
NIR-GB | 0.58–0.62 | ||||||
RGB | 0.69–0.73 | ||||||
0.34 | [124] | ||||||
Bioenergy grass (Arundo donax) | LiDAR | 0.73 | [102] | ||||
Peanut | RGB | 0.95 | [150] | ||||
0.86 | [150] | ||||||
Blueberry | RGB | 0.92 | [121] | ||||
Terrestrial or ground platform | Maize | Laser scanner | 0.93 | [151] | |||
Cotton | Ultrasonic | 0.87 | 3.10 cm | [152] | |||
RGB-D | 0.99 | 0.34 cm | [153] | ||||
LiDAR | 0.97 | [154] | |||||
0.98 | 6.50 cm | [155] | |||||
Triticale | RGB | 0.97 | [156] | ||||
Wheat | LiDAR | 0.86 | 7.90 cm | [24] | |||
0.90 | [157] | ||||||
0.99 | 1.70 cm | [158] | |||||
RGB | 0.95 | 3.95 cm | [159] | ||||
Sorghum | Ultrasonic | 0.93 | [160] | ||||
LiDAR | 0.88–0.9 | ||||||
Canopy cover and leaf area index | sUAS | Blueberry | RGB | 0.70–0.83 | [121] | ||
Soybean | RGB | >0.70 | [69] | ||||
Cotton | Multispectral | 0.33–0.57 | [52] | ||||
Citrus | Multispectral | 0.85% | [87] | ||||
Rice | Hyperspectral | 0.82 | 0.10 | [70] | |||
Soybean | RGB and Multispectral fusion | 0.059 | [50] | ||||
Maize | RGB | 0.75 | 0.34 | [122] | |||
Terrestrial or ground platform | Cotton | LiDAR | 0.97 | [154] | |||
Wheat | LiDAR | 0.92 | [158] | ||||
Soybean | RGB | 0.89 | [161] | ||||
HSI | 0.80 | [161] | |||||
Maize | LiDAR | 0.92 | [162] | ||||
Sorghum | LiDAR | 0.94 | [162] | ||||
Biomass or dry matter production | sUAS | Soybean | Multispectral and thermal fusion | 0.10 | [50] | ||
Rice | Hyperspectral | 0.79 | 0.11 | [70] | |||
Barley, triticale, and wheat | Multispectral | 0.44–0.59 | [57] | ||||
Maize | Hyperspectral | 0.47 | [108] | ||||
LiDAR | 0.83 | ||||||
Hyperspectral and LiDAR fusion | 0.88 | ||||||
Dry bean | Multispectral and thermal | (−0.67)–(−0.91) | [51] | ||||
Bioenergy grass (Arundo donax) | LiDAR | 0.71 | [102] | ||||
Terrestrial or ground platform | Wheat | LiDAR | 0.92–0.93 | [158] | |||
Sugar beet | RGB | 0.82–0.88 | [163] | ||||
Cassava | LiDAR | 0.73 | [164] | ||||
Maize | LiDAR | 0.68–0.80 | [165] | ||||
Canopy temperature and yield | sUAS | Wheat | RGB | 0.94 | [166] | ||
Multispectral | 0.60 | [144] | |||||
0.63 | [144] | ||||||
0.65 | |||||||
0.43 | |||||||
0.57 | |||||||
Rice | RGB | 0.73–076 | [167] | ||||
Multispectral | 0.82 | [144] | |||||
Multispectral and thermal | |||||||
Terrestrial or ground platform | Wheat | 0.52 | |||||
0.36 | [168] | ||||||
0.51 |
Platform | Initial Cost | Maintenance | Training | Human Resources | Payload | Coverage Area |
sUAS | Moderate (≤USD 20K) | Low to Moderate | Moderate to High | Low | Low (≤1 kg) | Moderate to High (>5 ha) |
Terrestrial handheld | Low to Moderate (USD 100–20K) | Low | Low | High | Low to Moderate (1–20 kg) | Low (<2 ha) |
Terrestrial cart | Moderate (≤USD 20K) | Low to Moderate | Moderate | Low to Moderate | Moderate (≤20 kg) | Low to Moderate (≤2 ha) |
Terrestrial tractor | High (≥USD 40K) | High | Moderate to High | Moderate | High (>20 kg) | Moderate (≤5 ha) |
Sensor | Initial Cost | Maintenance | Deployment | Platform | Data Processing | Computational Resources |
RGB camera | Low (≤USD 1K) | Low | Easy | sUAS * and Terrestrial | Easy to Moderate | Moderate |
Multispectral camera | Moderate (≤USD 20K) | Moderate | Moderate | sUAS * and Terrestrial | Moderate | Moderate |
Thermal camera | Moderate (≤USD 20K) | Moderate | Moderate to Difficult | sUAS * and Terrestrial | Moderate | Moderate to High |
Hyperspectral camera | High (≥USD 40K) | Moderate | Moderate to Difficult | sUAS | Moderate | Moderate to High |
LiDAR | High (≥USD 40K) | Moderate to High | Difficult | sUAS and Terrestrial * | Moderate to Difficult | Moderate to High |
Infrared thermometer | Low (≤USD 1K) | Low | Easy | Terrestrial | Easy | Low |
Multispectral radiometer | Low (≤USD 1K) | Low | Easy | Terrestrial | Easy | Low |
Ultrasonic transducer | Low (≤USD 1K) | Low | Easy | Terrestrial | Easy | Low |
Laser scanner | Low to Moderate (USD 100–20K) | Low to Moderate | Moderate | Terrestrial | Easy to Moderate | Low to Moderate |
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© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Ayankojo, I.T.; Thorp, K.R.; Thompson, A.L. Advances in the Application of Small Unoccupied Aircraft Systems (sUAS) for High-Throughput Plant Phenotyping. Remote Sens. 2023, 15, 2623. https://doi.org/10.3390/rs15102623
Ayankojo IT, Thorp KR, Thompson AL. Advances in the Application of Small Unoccupied Aircraft Systems (sUAS) for High-Throughput Plant Phenotyping. Remote Sensing. 2023; 15(10):2623. https://doi.org/10.3390/rs15102623
Chicago/Turabian StyleAyankojo, Ibukun T., Kelly R. Thorp, and Alison L. Thompson. 2023. "Advances in the Application of Small Unoccupied Aircraft Systems (sUAS) for High-Throughput Plant Phenotyping" Remote Sensing 15, no. 10: 2623. https://doi.org/10.3390/rs15102623