Estimation of Vegetable Crop Parameter by Multi-temporal UAV-Borne Images
Abstract
:1. Introduction
2. Methods
2.1. Study Site
2.2. Experimental Design
2.3. Plant Sampling and Measurements
2.4. RGB Imagery Sampling
2.5. Point Cloud Processing
2.6. Ground Classification
2.7. Statistical Methods
3. Results
3.1. Crop Height Estimation
3.2. Crop Height Deviation within the Growing Season
3.3. Crop Biomass Estimation
4. Discussion
5. Uncertainties, Errors, and Accuracies
6. Conclusions
Author Contributions
Acknowledgments
Conflicts of Interest
Appendix A
Eggplant | Tomato | Cabbage | |
---|---|---|---|
Sampling date 1 | 8 March 2017 | 9 March 2017 | 7 March 2017 |
Sampling date 2 | 29 March 2017 | 30 March 2017 | 28 March 2017 |
Sampling date 3 | 20 April 2017 | 18 April 2017 | 10 April 2017 |
Sampling date 4 | 16 May 2017 | 4 May 2017 | 11 May 2017 |
Sampling date 5 | 13 June 2017 | 5 June 2017 | 7 June 2017 |
Crop | Sampling Date | Measured Crop Height | Biomass [kg m−2] | Hmin | Hmax | Hmean | Hsd | Hmedian | Hskew | Hkurt | Hcv | Hq70 | Hq80 | Hq90 | Hq95 | Hq99 | Hrelief |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Cabbage | 1 | 5.856 (0.379) | 0.028 (0.028) | 0.001 (0) | 0.173 (0.417) | 0.017 (0.050) | 0.028 (0.107) | 0.005 (0.001) | 3.669 (3.537) | 46.453 (97.946) | 0.989 (0.437) | 0.042 (0.145) | 0.066 (0.248) | 0.081 (0.306) | 0.089 (0.316) | 0.109 (0.329) | 0.099 (0.056) |
2 | 11.936 (1.020) | 0.139 (0.139) | 0.001 (0) | 0.168 (0.508) | 0.012 (0.012) | 0.02 (0.057) | 0.007 (0.001) | 1.742 (0.673) | 3.857 (3.906) | 1.005 (0.688) | 0.026 (0.039) | 0.034 (0.056) | 0.051 (0.116) | 0.080 (0.234) | 0.108 (0.328) | 0.132 (0.035) | |
3 | 14.947 (1.061) | 0.446 (0.446) | 0.001 (0) | 0.198 (0.446) | 0.017 (0.007) | 0.021 (0.042) | 0.013 (0.001) | 1.685 (1.356) | 6.123 (12.136) | 0.933 (0.737) | 0.035 (0.022) | 0.042 (0.034) | 0.055 (0.063) | 0.075 (0.130) | 0.132 (0.322) | 0.153 (0.052) | |
4 | 22.296 (0.892) | 2.746 (2.746) | 0.001 (0) | 0.235 (0.374) | 0.035 (0.005) | 0.032 (0.031) | 0.029 (0.002) | 1.132 (1.417) | 2.738 (12.325) | 0.854 (0.462) | 0.070 (0.016) | 0.080 (0.024) | 0.095 (0.044) | 0.114 (0.086) | 0.177 (0.298) | 0.207 (0.047) | |
5 | 24.967 (1.029) | 4.972 (4.972) | 0.001 (0) | 0.320 (0.643) | 0.035 (0.004) | 0.030 (0.022) | 0.029 (0.002) | 1.283 (1.885) | 5.397 (22.835) | 0.825 (0.401) | 0.069 (0.011) | 0.078 (0.015) | 0.093 (0.027) | 0.108 (0.052) | 0.166 (0.233) | 0.186 (0.054) | |
Eggplant | 1 | 8.744 (0.883) | 0.015 (0.015) | 0.001 (0) | 0.445 (1.299) | 0.006 (0.002) | 0.014 (0.033) | 0.005 (0.001) | 4.546 (6.417) | 75.084 (171.526) | 1.631 (2.860) | 0.011 (0.005) | 0.013 (0.007) | 0.018 (0.016) | 0.021 (0.017) | 0.076 (0.174) | 0.095 (0.056) |
2 | 20.020 (1.736) | 0.099 (0.099) | 0.001 (0) | 0.100 (0.013) | 0.018 (0.004) | 0.016 (0.003) | 0.012 (0.003) | 1.321 (0.248) | 1.451 (1.016) | 0.928 (0.067) | 0.038 (0.007) | 0.044 (0.008) | 0.053 (0.009) | 0.060 (0.009) | 0.074 (0.009) | 0.168 (0.030) | |
3 | 44.833 (3.433) | 0.727 (0.727) | 0.001 (0) | 0.456 (0.260) | 0.042 (0.004) | 0.034 (0.003) | 0.035 (0.004) | 1.450 (0.493) | 6.031 (9.016) | 0.812 (0.038) | 0.084 (0.008) | 0.095 (0.009) | 0.114 (0.010) | 0.132 (0.010) | 0.176 (0.016) | 0.112 (0.047) | |
4 | 68.798 (4.790) | 2.239 (2.239) | 0.001 (0) | 0.326 (0.103) | 0.074 (0.039) | 0.049 (0.015) | 0.066 (0.042) | 0.877 (0.395) | 0.894 (1.329) | 0.719 (0.108) | 0.134 (0.056) | 0.149 (0.058) | 0.171 (0.061) | 0.191 (0.062) | 0.229 (0.063) | 0.226 (0.097) | |
5 | 70.315 (4.778) | 1.902 (1.902) | 0.001 (0) | 0.271 (0.042) | 0.054 (0.010) | 0.042 (0.007) | 0.045 (0.009) | 1.100 (0.167) | 1.185 (0.719) | 0.786 (0.036) | 0.107 (0.019) | 0.121 (0.021) | 0.144 (0.024) | 0.164 (0.026) | 0.204 (0.030) | 0.199 (0.033) | |
Crop | Sampling Date | Measured Crop Height | Biomass [kg m−2] | Hmin | Hmax | Hmean | Hsd | Hmedian | Hskew | Hkurt | Hcv | Hq70 | Hq80 | Hq90 | Hq95 | Hq99 | Hrelief |
Tomato | 1 | 9.249 (0.592) | 0.014 (0.014) | 0.001 (0) | 0.088 (0.187) | 0.008 (0.011) | 0.011 (0.033) | 0.005 (0) | 2.253 (1.805) | 14.877 (22.386) | 0.833 (0.408) | 0.018 (0.035) | 0.022 (0.046) | 0.035 (0.102) | 0.044 (0.132) | 0.059 (0.162) | 0.129 (0.056) |
2 | 24.544 (2.504) | 0.050 (0.050) | 0.001 (0) | 0.131 (0.240) | 0.009 (0.006) | 0.013 (0.025) | 0.006 (0.001) | 2.852 (0.848) | 13.540 (9.779) | 1.079 (0.576) | 0.020 (0.018) | 0.024 (0.026) | 0.037 (0.054) | 0.054 (0.106) | 0.084 (0.169) | 0.091 (0.027) | |
3 | 43.651 (4.829) | 0.360 (0.360) | 0.001 (0) | 0.500 (0.534) | 0.033 (0.006) | 0.036 (0.007) | 0.021 (0.006) | 2.880 (4.579) | 69.698 (311.362) | 1.078 (0.128) | 0.076 (0.012) | 0.090 (0.014) | 0.113 (0.020) | 0.137 (0.031) | 0.192 (0.064) | 0.089 (0.030) | |
4 | 53.727 (5.782) | 1.140 (1.140) | 0.001 (0) | 0.611 (0.374) | 0.060 (0.030) | 0.061 (0.038) | 0.038 (0.011) | 1.718 (0.403) | 4.884 (3.454) | 0.974 (0.126) | 0.136 (0.080) | 0.160 (0.097) | 0.198 (0.120) | 0.232 (0.137) | 0.306 (0.159) | 0.108 (0.033) | |
5 | 46.474 (3.091) | 0.827 (0.827) | 0.001 (0) | 0.305 (0.134) | 0.017 (0.005) | 0.021 (0.010) | 0.010 (0.002) | 4.061 (1.885) | 37.573 (41.772) | 1.220 (0.213) | 0.039 (0.013) | 0.048 (0.018) | 0.065 (0.029) | 0.084 (0.045) | 0.139 (0.075) | 0.060 (0.023) |
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Metric | Description |
---|---|
Hmin | Minimum crop height |
Hmax | Maximum crop height |
Hmean | Mean crop height |
Hsd | Standard deviation of crop height |
Hmedian | Median crop height |
Hskew | Skewness of crop height |
Hkurt | Kurtosis of crop height |
Hcv | Coefficient of variation crop height |
Hq70 | 70th percentile of crop height |
Hq80 | 80th percentile of crop height |
Hq90 | 90th percentile of crop height |
Hq95 | 95th percentile of crop height |
Hq99 | 99th percentile of crop height |
Hrelief | Crop canopy relief height (Hmean-Hmin)/(Hmax-Hmin) |
p-Value | |||
---|---|---|---|
Sampling Date (SD) | N Fertilizer (NF) | SD × NF | |
Eggplant | <0.001 | 0.141 | 0.453 |
Tomato | <0.001 | 0.978 | 0.720 |
Cabbage | <0.001 | 0.454 | 0.691 |
Hmin | Hmax | Hmean | Hsd | Hmedian | Hskew | Hkurt | Hcv | Hq70 | Hq80 | Hq90 | Hq95 | Hq99 | |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Hmax | 0.01 | ||||||||||||
Hmean | 0.38 | 0.36 | |||||||||||
Hsd | 0.1 | 0.67 | 0.75 | ||||||||||
Hmedian | 0.53 | 0.15 | 0.83 | 0.33 | |||||||||
Hskew | −0.06 | 0.64 | −0.19 | 0.13 | −0.25 | ||||||||
Hkurt | −0.02 | 0.55 | −0.08 | 0.07 | -0.09 | 0.84 | |||||||
Hcv | −0.04 | 0.82 | 0.01 | 0.42 | -0.14 | 0.7 | 0.45 | ||||||
Hq70 | 0.24 | 0.43 | 0.97 | 0.86 | 0.67 | −0.14 | −0.06 | 0.08 | |||||
Hq80 | 0.18 | 0.43 | 0.91 | 0.91 | 0.53 | −0.1 | −0.05 | 0.11 | 0.98 | ||||
Hq90 | 0.15 | 0.49 | 0.86 | 0.95 | 0.45 | −0.05 | −0.04 | 0.19 | 0.95 | 0.98 | |||
Hq95 | 0.12 | 0.55 | 0.79 | 0.97 | 0.39 | 0.01 | −0.02 | 0.27 | 0.89 | 0.91 | 0.97 | ||
Hq99 | 0.07 | 0.74 | 0.62 | 0.92 | 0.29 | 0.23 | 0.1 | 0.51 | 0.71 | 0.73 | 0.81 | 0.9 | |
Hrelief | 0.34 | −0.33 | 0.38 | −0.04 | 0.57 | −0.57 | −0.3 | −0.35 | 0.24 | 0.16 | 0.08 | 0.01 | −0.14 |
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Share and Cite
Moeckel, T.; Dayananda, S.; Nidamanuri, R.R.; Nautiyal, S.; Hanumaiah, N.; Buerkert, A.; Wachendorf, M. Estimation of Vegetable Crop Parameter by Multi-temporal UAV-Borne Images. Remote Sens. 2018, 10, 805. https://doi.org/10.3390/rs10050805
Moeckel T, Dayananda S, Nidamanuri RR, Nautiyal S, Hanumaiah N, Buerkert A, Wachendorf M. Estimation of Vegetable Crop Parameter by Multi-temporal UAV-Borne Images. Remote Sensing. 2018; 10(5):805. https://doi.org/10.3390/rs10050805
Chicago/Turabian StyleMoeckel, Thomas, Supriya Dayananda, Rama Rao Nidamanuri, Sunil Nautiyal, Nagaraju Hanumaiah, Andreas Buerkert, and Michael Wachendorf. 2018. "Estimation of Vegetable Crop Parameter by Multi-temporal UAV-Borne Images" Remote Sensing 10, no. 5: 805. https://doi.org/10.3390/rs10050805
APA StyleMoeckel, T., Dayananda, S., Nidamanuri, R. R., Nautiyal, S., Hanumaiah, N., Buerkert, A., & Wachendorf, M. (2018). Estimation of Vegetable Crop Parameter by Multi-temporal UAV-Borne Images. Remote Sensing, 10(5), 805. https://doi.org/10.3390/rs10050805