Rice False Smut Monitoring Based on Band Selection of UAV Hyperspectral Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Acquisition
2.1.1. Experimental Design and UAV Photogrammetry
2.1.2. Field Measurement
2.2. Data Preprocessing
2.2.1. Hyperspectral Data Filtering Processing
2.2.2. Acquisition of Rice False Smut Monitoring Database
2.3. Hyperspectral Feature Band Optimization
2.3.1. Hyperspectral Feature Band Optimization Based on Genetic Algorithm
- Step1: Generate the initial population. Taking the rice disease monitoring accuracy as the optimal object, the hyperspectral band was coded with binary code as the gene and the initial population was randomly generated.
- Step2: Selecting Fitness function. In the genetic algorithm, individual fitness is used to determine the probability of the individual being inherited to the next generation population. The greater the fitness of an individual, the greater the probability that the individual will be inherited to the next generation and vice versa [31]. Partial least squares cross test of mean square error (RMSECV) was used as the fitness function [23].
- Step3: Genetic algorithm parameter design. The main control parameters of genetic algorithm include population size, iteration times, mutation probability, crossover probability, etc. In addition, before the initial population is assigned, it should be estimated at a large probability interval to avoid the limitation of the search range of the genetic algorithm and reduce the burden on the algorithm at the same time. If the group size is too large, the results are difficult to converge and waste resources and the robustness decreases. If the mutation probability is too small and the population diversity declines too fast, it easily leads to the rapid loss of effective genes and is no picnic to repair. If the iteration of the genetic algorithm is too small, the algorithm will not converge easily; If the number of iterations is too large, the algorithm will lead to a premature population and further evolution will only increase time expenditure and waste of resources. If the mutation probability is too large, the diversity of the population can be guaranteed, but the better solution will be eliminated. Similar to the mutation probability, the crossover probability is easy to destroy the existing solution, increases the randomness and easily misses the optimal individual; In addition, if the crossover probability is too small, the genetic algorithm cannot effectively renew the population [32].
- Step4: Algorithm termination condition. When the fitness of the optimal band combination is no longer improved or the number of iterations of the genetic algorithm reaches the preset number of iterations, the operation is aborted. After repeated experiments and tests, the initial population size is set as 30, the crossover probability is 0.5, the mutation probability is 0.01 and the maximum iteration is 100 at this moment [26].
2.3.2. Hyperspectral Feature Band Optimization Based on Correlation Coefficient
2.3.3. Hyperspectral Feature Band Optimization Based on Instability Index between Classes
2.4. Model Establishment and Verification
3. Results
3.1. Screening Results of Spectral Characteristic Bands by Genetic Algorithm
3.2. Screening Results of Spectral Characteristic Bands by Correlation Coefficient
3.3. Screening Results of Spectral Characteristic Bands by Instability Index between Classes
3.4. Model Test
3.5. Monitoring Results of Rice False Smut
4. Discussion
5. Conclusions
- (1)
- The method of hyperspectral characteristic bands selecting based on genetic algorithm, correlation coefficient method and Instability Index between Classes is an effective band selection method. It can effectively reduce the data dimension (27.78% of bands can be further eliminated in this paper) and reduce the amount of data while ensuring the monitoring accuracy of the model.
- (2)
- The selection of bands with strong correlation will reduce the model monitoring accuracy.
- (3)
- The difference of spectral characteristics between diseased and healthy rice is a useful information for monitoring rice false smut.
- (4)
- The sensitive bands of rice false smut surveillance ranged between 698–800 nm and 974–997 nm.
- (5)
- Both RF model and GBDT model can effectively extract the affected areas of rice false smut. The RF model has higher accuracy and the GBDT model has higher potential to improve accuracy.
- (6)
- The early heading stage is an important time point for controlling rice false smut.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Technical Parameter | Value |
---|---|
Maximum load weight | 4.5 kg |
Endurance time | 180 min |
Operating ambient temperature | −50 °C to 15 °C |
Angular jitter | ±0.02° |
Technical Parameter | Value |
---|---|
Wavelength range | 400–1000 nm |
Number of pixels per row | 640 |
Number of bands | 270 |
Spectral resolution | 2.2 nm |
Operating ambient temperature | 0–50 °C |
Date | Speed | Altitude |
---|---|---|
14 August 2020 | 5.8 m/s | 100 m |
20 August 2020 | 6.8 m/s | 100 m |
25 August 2020 | 6.2 m/s | 100 m |
2 September 2020 | 6.0 m/s | 100 m |
Number of Sampling Points | Training Set | Validation Set | |
---|---|---|---|
no-m1 | 280 | 196 | 84 |
no-m2 | 170 | 119 | 51 |
no-m3 | 104 | 73 | 31 |
no-m4 | 111 | 78 | 33 |
no-m5 | 105 | 73 | 32 |
yes-m1 | 428 | 300 | 128 |
yes-m2 | 335 | 235 | 199 |
Total | Health | 539 | 231 |
Infected | 535 | 327 |
Predicted Results | ||
---|---|---|
Real Situation | Positive Example | Negative Example |
positive example | TP (True positive example) | FN (False negative example) |
negative example | FP (False positive example) | TN (True negative example) |
Preferred band number | 7, 14, 19, 97, 135, 137, 155, 166, 172, 181, 206, 234, 260, 261, 262, 264, 268, 270 |
Preferred band wavelength | 414.817 nm, 430.309 nm, 441.375 nm, 614.006 nm, 698.107 nm, 702.534 nm, 742.372 nm, 766.717 nm, 779.996 nm, 799.915 nm, 855.245 nm, 917.215 nm, 974.758 nm, 976.972 nm, 979.185 nm, 983.611 nm, 992.464 nm, 996.891 nm |
Preferred band number | 7, 14, 19, 97, 135, 137, 155, 181, 206, 234, 260, 261, 262, 264, 268, 270 |
Preferred band wavelength | 414.817 nm, 430.309 nm, 441.375 nm, 614.006 nm, 698.107 nm, 702.534 nm, 742.372 nm, 799.915 nm, 855.245 nm, 917.215 nm, 974.758 nm, 976.972 nm, 979.185 nm, 983.611 nm, 992.464 nm, 996.891 nm |
Preferred band number | 19, 135, 137, 155, 181, 206, 234, 260, 261, 262, 264, 268, 270 |
Preferred band wavelength | 441.375 nm, 698.107 nm, 702.534 nm, 742.372 nm, 799.915 nm, 855.245 nm, 917.215 nm, 974.758 nm, 976.972 nm, 979.185 nm, 983.611 nm, 992.464 nm, 996.891 nm |
Method | GA 1 | PCC 2 | ISIC 3 | PCC + ISIC |
---|---|---|---|---|
Accuracy | 83.44% | 84.10% | 84.10% | 85.62% |
Precision | 79.84% | 80.08% | 80.08% | 81.54% |
Recall | 89.57% | 90.87% | 90.87% | 92.17% |
F1-score | 0.84 | 0.85 | 0.85 | 0.87 |
Excluded wavelength | 766 nm, 779 nm | 414 nm, 430 nm 614 nm | 414 nm, 430 nm 614 nm, 766 nm 779 nm | |
Number of selected bands | 18 | 16 | 15 | 13 |
Method | GA 1 | PCC 2 | ISIC 3 | PCC + ISIC |
---|---|---|---|---|
Accuracy | 81.70% | 84.53% | 82.79% | 84.10% |
Precision | 77.86% | 81.42% | 78.93% | 79.85% |
Recall | 88.70% | 89.57% | 89.57% | 91.30% |
F1-score | 0.83 | 0.85 | 0.83 | 0.85 |
Excluded wavelength | 766.717 nm, 779.996 nm | 414.817 nm, 430.309 nm, 614.006 nm | 414.817 nm, 430.309 nm 614.006 nm, 766.717 nm 779.996 nm | |
Number of selected bands | 18 | 16 | 15 | 13 |
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Wang, Y.; Xing, M.; Zhang, H.; He, B.; Zhang, Y. Rice False Smut Monitoring Based on Band Selection of UAV Hyperspectral Data. Remote Sens. 2023, 15, 2961. https://doi.org/10.3390/rs15122961
Wang Y, Xing M, Zhang H, He B, Zhang Y. Rice False Smut Monitoring Based on Band Selection of UAV Hyperspectral Data. Remote Sensing. 2023; 15(12):2961. https://doi.org/10.3390/rs15122961
Chicago/Turabian StyleWang, Yanxiang, Minfeng Xing, Hongguo Zhang, Binbin He, and Yi Zhang. 2023. "Rice False Smut Monitoring Based on Band Selection of UAV Hyperspectral Data" Remote Sensing 15, no. 12: 2961. https://doi.org/10.3390/rs15122961
APA StyleWang, Y., Xing, M., Zhang, H., He, B., & Zhang, Y. (2023). Rice False Smut Monitoring Based on Band Selection of UAV Hyperspectral Data. Remote Sensing, 15(12), 2961. https://doi.org/10.3390/rs15122961