Research Article
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Crop cover identification based on different vegetation indices by using machine learning algorithms

Year 2024, Volume: 7 Issue: 3, 422 - 434, 30.09.2024
https://doi.org/10.35208/ert.1446909

Abstract

In this article, three different indices NDVI (Normalized Difference Vegetation Index), BNDVI (Blue Normalized Difference Vegetation Index) and GNDVI (Green Normalized Difference Vegetation Index) are used for the identification of wheat, mustard and sugarcane crop of Saharanpur district’s region of Uttar Pradesh. Sentinel 2B satellite images are collected from October 02, 2018 to April 15, 2019. These images are processed using Google Earth Engine. These sentinel images are used to generate NDVI, BNDVI and GNDVI images using GEE. These three different indices images are further processed using SNAP software and particular indices values for 210 different locations are calculated. The same process is used for calculating BNDVI and GNDVI values. ARIMA, LSTM and Prophet models are used to train the time series indices values (NDVI, BNDVI and GNDVI) of wheat, mustard and sugarcane crop. these models are used to analyse MSE (mean absolute percentage error) and RMSE values by considering various parameters. Using ARIMA Model, for wheat crop GNDVI indices shows minimum RMSE 0.020, For Sugarcane crop NDVI indices shows minimum RMSE 0.053, For Mustard crop GNDVI indices shows minimum RMSE 0.024. Using LSTM model, for wheat crop NDVI indices shows minimum RMSE 0.036, For Sugarcane crop BNDVI indices shows minimum RMSE 0.054, For Mustard crop GNDVI indices shows minimum RMSE 0.026. Using Prophet model, for wheat crop GNDVI indices shows minimum RMSE 0.055, For Sugarcane crop NDVI indices shows minimum RMSE 0.088, For Mustard crop GNDVI indices using Prophet model shows minimum RMSE 0.101.

References

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  • Q. Li, J. Tian, and Q. Tian, “Deep Learning application for crop classification via multi-temporal remote sensing images,” Agriculture (Switzerland), Vol. 13(4), Article 906, 2023. [CrossRef]
  • J. Dyson, A. Mancini, E. Frontoni, and P. Zingaretti, “Deep learning for soil and crop segmentation from remotely sensed data,” Remote Sensing (Basel), Vol. 11(16), Article 1859, 2019. [CrossRef]
  • N. Yang, D. Liu, Q. Feng, Q. Xiong, L. Zhang, T. Ren, … and J. Huang, “Large-scale crop mapping based on machine learning and parallel computation with grids,” Remote Sensing (Basel), Vol. 11(12), Article 1500, 2019. [CrossRef] G. A. Abubakar, K. Wang, A. R. Shahtahamssebi, X. Xue, M. Belete, A. J. Abdallah Gudo, and M. Gan, “Mapping maize fields by using multi-temporal sentinel-1a and sentinel-2a images in Makarfi, Northern Nigeria, Africa,” Sustainability (Switzerland), Vol. 12(6), Article 2539, 2020. [CrossRef]
  • X. Guan, C. Huang, G. Liu, X. Meng, and Q. Liu, “Mapping rice cropping systems in Vietnam using an NDVI-based time-series similarity measurement based on DTW distance,” Remote Sens (Basel), Vol. 8(1), Article 19, 2016. [CrossRef]
  • J. Senthilnath, S. Kulkarni, J. A. Benediktsson, and X. S. Yang, “A novel approach for multispectral satellite image classification based on the bat algorithm,” IEEE Geoscience and Remote Sensing Letters, Vol. 13(4), pp. 599–603, 2016. [CrossRef]
  • X. Zhang, Y. Sun, K. Shang, L. Zhang, and S. Wang, “Crop classification based on feature band set construction and object-oriented approach using hyperspectral images,” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Vol. 9(9), pp. 4117–4128, 2016. [CrossRef]
  • S. Siachalou, G. Mallinis, and M. Tsakiri-Strati, “Analysis of time-series spectral index data to enhance crop identification over a mediterranean rural landscape,” IEEE Geoscience and Remote Sensing Letters, Vol. 14(9), pp. 1508–1512, 2017. [CrossRef]
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  • Y. Palchowdhuri, R. Valcarce-Diñeiro, P. King, and M. Sanabria-Soto, “Classification of multi-temporal spectral indices for crop type mapping: A case study in Coalville, UK,” Journal of Agricultural Science, Vol. 156(1), pp. 24–36, 2018. [CrossRef]
  • R. Sonobe, Y. Yamaya, H. Tani, X. Wang, N. Kobayashi, and K. Mochizuki, “Crop classification from Sentinel-2-derived vegetation indices using ensemble learning,” Journal of Applied Remote Sensing, Vol. 12(02), pp. 1, 2018. [CrossRef]
  • N. Kobayashi, H. Tani, X. Wang, and R. Sonobe, “Crop classification using spectral indices derived from sentinel-2a imagery,” Journal of Information and Telecommunication, Vol. 4(1), pp. 67–90, 2020. [CrossRef]
  • H. Tian, N. Huang, Z. Niu, Y. Qin, J. Pei, and J. Wang, “Mapping winter crops in China with multi-source satellite imagery and phenology-based algorithm,” Remote Sensing (Basel), Vol. 11(7), 2019. [CrossRef]
  • E. Akbari, A. D. Boloorani, N. N. Samany, S. Hamzeh, S. Soufizadeh, and S. Pignatti, “Crop mapping using random forest and particle swarm optimization based on multi-temporal sentinel-2,” Remote Sensing (Basel), Vol. 12(9), 2020. [CrossRef] K. Goldberg, I. Herrmann, U. Hochberg, and O. Rozenstein, “Generating up-to-date crop maps optimized for sentinel-2 imagery in Israel,” Remote Sensing (Basel), Vol. 13(17), 2021. [CrossRef]
  • Y. Kang, X. Hu, Q. Meng, Y. Zou, L. Zhang, M. Liu, and M. Zhao, “Land cover and crop classification based on red edge indices features of gf-6 wfv time series data,” Remote Sensing (Basel), Vol. 13(22), Article 4522, 2021. [CrossRef]
  • Y. Hu, H. Zeng, F. Tian, M. Zhang, B. Wu, S. Gilliams, … and H. Yang, et al., “An interannual transfer learning approach for crop classification in the Hetao Irrigation District, China,” Remote Sensing (Basel), Vol. 14(5), Article 1208, 2022. [CrossRef]
  • K. Ravali, and M. Teng-Sheng, Machine Learning in Indian Crop Classification of Temporal Multi-Spectral Satellite Image, 14th IMCOM 2020. Taichung, Taiwan, 2020.
  • K. Aleem, P. Leonardo, and C. Marcello, “Land cover and crop classification using multitemporal sentinel-2 images based on crops phenological Cycle,” IEEE Workshop EESMS. Salerno, Italy, 2018.
  • X. Chen, Y. Zhan, Y. Liu, X. Gu, T. Yu, … and Y. Zhang, “Improving the classification accuracy of annual crops using time series of temperature and vegetation indices,” Remote Sensing (Basel), Vol. 12(19), Article 3202, 2020. [CrossRef]
  • F. Carreño-Conde, A. E. Sipols, C. Simón, and D. Mostaza-Colado, “A forecast model applied to monitor crops dynamics using vegetation indices (Ndvi),” Applied Sciences (Switzerland), Vol. 11(4), pp. 1–25, 2021. [CrossRef]
  • R. Sonobe, Y. Yamaya, H. Tani, X. Wang, N. Kobayashi, and K. ichiro Mochizuki, “Assessing the suitability of data from Sentinel-1A and 2A for crop classification,” GIsci Remote Sensing, Vol. 54(6), pp. 918–938, 2017. [CrossRef]
  • R. Azar, P. Villa, D. Stroppiana, A. Crema, M. Boschetti, and P. A. Brivio, “Assessing in-season crop classification performance using satellite data: A test case in Northern Italy,” European Journal of Remote Sensing, Vol. 49, pp. 361–380, 2016. [CrossRef]
  • A. Bouguettaya, H. Zarzour, A. Kechida, and A. M. Taberkit, “Deep learning techniques to classify agricultural crops through UAV imagery: a review,” Neural Computing and Applications, Vol. 34(12), pp. 9511–9536, 2022. [CrossRef]
  • N. Kussul, M. Lavreniuk, S. Skakun, and A. Shelestov, “Deep learning classification of land cover and crop types using remote sensing data,” IEEE Geoscience and Remote Sensing Letters, Vol. 14(5), pp. 778–782, 2017. [CrossRef]
  • N. Kussul, S. Skakun, A. Shelestov, M. Lavreniuk, B. Yailymov, and O. Kussul, “Regional scale crop mapping using multi-temporal satellite imagery,” in International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, International Society for Photogrammetry and Remote Sensing, 2015, pp. 45–52, 2015. [CrossRef]
  • N. Kussul, G. Lemoine, F. J. Gallego, S. V. Skakun, M. Lavreniuk, and A. Y. Shelestov, “Parcel-Based Crop Classification in Ukraine Using Landsat-8 Data and Sentinel-1A Data,” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Vol. 9(6), pp. 2500–2508, 2016. [CrossRef]
  • L. Pan, H. Xia, X. Zhao, Y. Guo, and Y. Qin, “Mapping winter crops using a phenology algorithm, time-series sentinel-2 and landsat-7/8 images, and google earth engine,” Remote Sens (Basel), Vol. 13(13), Article 2510, 2021. [CrossRef]
Year 2024, Volume: 7 Issue: 3, 422 - 434, 30.09.2024
https://doi.org/10.35208/ert.1446909

Abstract

References

  • V. Avashia, S. Parihar, and A. Garg, “Evaluation of classification techniques for land use change mapping of Indian Cities,” Journal of the Indian Society of Remote Sensing, Vol. 48(6), pp. 877–908, 2020. [CrossRef]
  • P. Patil, V. Panpatil, and S. Kokate, “Crop prediction system using machine learning algorithms,” International Research Journal of Engineering and Technology, Vol. 7(2), pp. 748753, 2020.
  • B. E. Bunker, “Classification of satellite time series-derived land surface phenology focused on the northern fertile crescent,” [Dissertation thesis], University of Arkansas, 2013.
  • X. X. Zhou, Y.‑Y. Li, Y.‑K. Luo, Y.‑W. Sun, Y.‑J. Su, C.‑W. Tan, and Y.‑J. Liu, “Research on remote sensing classification of fruit trees based on Sentinel-2 multi-temporal imageries,” Scientific Reports, Vol. 12(1), 2022. [CrossRef]
  • L. Wang, Q. Dong, L. Yang, J. Gao, and J. Liu, “Crop classification based on a novel feature filtering and enhancement method,” Remote Sensing (Basel), Vol. 11(4), 2019. [CrossRef]
  • E. Omia et al, H. Bae, E. Park, M. S. Kim, I. Baek, I. Kabenge, and B.-K. Cho, “Remote sensing in field crop Monitoring: A comprehensive review of sensor systems, data analyses and recent advances,” Remote Sensing (Basel), Vol. 15(2), Article 354, 2023. [CrossRef]
  • R. Filgueiras, E. C. Mantovani, D. Althoff, E. I. Fernandes Filho, and F. F. da Cunha, “Crop NDVI monitoring based on sentinel 1,” Remote Sensing (Basel), Vol. 11(12), 2019. [CrossRef]
  • A. Orynbaikyzy, U. Gessner, B. Mack, and C. Conrad, “Crop type classification using fusion of sentinel-1 and sentinel-2 data: Assessing the impact of feature selection, optical data availability, and parcel sizes on the accuracies,” Remote Sensing (Basel), Vol. 12(17), 2020. [CrossRef]
  • P. Hao, L. Wang, and Z. Niu, “Comparison of hybrid classifiers for crop classification using normalized difference vegetation index time series: A case study for major crops in North Xinjiang, China,” PLoS One, Vol. 10(9), Article 0137748, 2015. [CrossRef]
  • Q. Li, J. Tian, and Q. Tian, “Deep Learning application for crop classification via multi-temporal remote sensing images,” Agriculture (Switzerland), Vol. 13(4), Article 906, 2023. [CrossRef]
  • J. Dyson, A. Mancini, E. Frontoni, and P. Zingaretti, “Deep learning for soil and crop segmentation from remotely sensed data,” Remote Sensing (Basel), Vol. 11(16), Article 1859, 2019. [CrossRef]
  • N. Yang, D. Liu, Q. Feng, Q. Xiong, L. Zhang, T. Ren, … and J. Huang, “Large-scale crop mapping based on machine learning and parallel computation with grids,” Remote Sensing (Basel), Vol. 11(12), Article 1500, 2019. [CrossRef] G. A. Abubakar, K. Wang, A. R. Shahtahamssebi, X. Xue, M. Belete, A. J. Abdallah Gudo, and M. Gan, “Mapping maize fields by using multi-temporal sentinel-1a and sentinel-2a images in Makarfi, Northern Nigeria, Africa,” Sustainability (Switzerland), Vol. 12(6), Article 2539, 2020. [CrossRef]
  • X. Guan, C. Huang, G. Liu, X. Meng, and Q. Liu, “Mapping rice cropping systems in Vietnam using an NDVI-based time-series similarity measurement based on DTW distance,” Remote Sens (Basel), Vol. 8(1), Article 19, 2016. [CrossRef]
  • J. Senthilnath, S. Kulkarni, J. A. Benediktsson, and X. S. Yang, “A novel approach for multispectral satellite image classification based on the bat algorithm,” IEEE Geoscience and Remote Sensing Letters, Vol. 13(4), pp. 599–603, 2016. [CrossRef]
  • X. Zhang, Y. Sun, K. Shang, L. Zhang, and S. Wang, “Crop classification based on feature band set construction and object-oriented approach using hyperspectral images,” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Vol. 9(9), pp. 4117–4128, 2016. [CrossRef]
  • S. Siachalou, G. Mallinis, and M. Tsakiri-Strati, “Analysis of time-series spectral index data to enhance crop identification over a mediterranean rural landscape,” IEEE Geoscience and Remote Sensing Letters, Vol. 14(9), pp. 1508–1512, 2017. [CrossRef]
  • M. Pasternak, and K. Pawluszek-Filipiak, “The evaluation of spectral vegetation indexes and redundancy reduction on the accuracy of crop type detection,” Applied Sciences (Switzerland), Vol. 12(10), Aricle 5067, 2022. [CrossRef]
  • Y. Palchowdhuri, R. Valcarce-Diñeiro, P. King, and M. Sanabria-Soto, “Classification of multi-temporal spectral indices for crop type mapping: A case study in Coalville, UK,” Journal of Agricultural Science, Vol. 156(1), pp. 24–36, 2018. [CrossRef]
  • R. Sonobe, Y. Yamaya, H. Tani, X. Wang, N. Kobayashi, and K. Mochizuki, “Crop classification from Sentinel-2-derived vegetation indices using ensemble learning,” Journal of Applied Remote Sensing, Vol. 12(02), pp. 1, 2018. [CrossRef]
  • N. Kobayashi, H. Tani, X. Wang, and R. Sonobe, “Crop classification using spectral indices derived from sentinel-2a imagery,” Journal of Information and Telecommunication, Vol. 4(1), pp. 67–90, 2020. [CrossRef]
  • H. Tian, N. Huang, Z. Niu, Y. Qin, J. Pei, and J. Wang, “Mapping winter crops in China with multi-source satellite imagery and phenology-based algorithm,” Remote Sensing (Basel), Vol. 11(7), 2019. [CrossRef]
  • E. Akbari, A. D. Boloorani, N. N. Samany, S. Hamzeh, S. Soufizadeh, and S. Pignatti, “Crop mapping using random forest and particle swarm optimization based on multi-temporal sentinel-2,” Remote Sensing (Basel), Vol. 12(9), 2020. [CrossRef] K. Goldberg, I. Herrmann, U. Hochberg, and O. Rozenstein, “Generating up-to-date crop maps optimized for sentinel-2 imagery in Israel,” Remote Sensing (Basel), Vol. 13(17), 2021. [CrossRef]
  • Y. Kang, X. Hu, Q. Meng, Y. Zou, L. Zhang, M. Liu, and M. Zhao, “Land cover and crop classification based on red edge indices features of gf-6 wfv time series data,” Remote Sensing (Basel), Vol. 13(22), Article 4522, 2021. [CrossRef]
  • Y. Hu, H. Zeng, F. Tian, M. Zhang, B. Wu, S. Gilliams, … and H. Yang, et al., “An interannual transfer learning approach for crop classification in the Hetao Irrigation District, China,” Remote Sensing (Basel), Vol. 14(5), Article 1208, 2022. [CrossRef]
  • K. Ravali, and M. Teng-Sheng, Machine Learning in Indian Crop Classification of Temporal Multi-Spectral Satellite Image, 14th IMCOM 2020. Taichung, Taiwan, 2020.
  • K. Aleem, P. Leonardo, and C. Marcello, “Land cover and crop classification using multitemporal sentinel-2 images based on crops phenological Cycle,” IEEE Workshop EESMS. Salerno, Italy, 2018.
  • X. Chen, Y. Zhan, Y. Liu, X. Gu, T. Yu, … and Y. Zhang, “Improving the classification accuracy of annual crops using time series of temperature and vegetation indices,” Remote Sensing (Basel), Vol. 12(19), Article 3202, 2020. [CrossRef]
  • F. Carreño-Conde, A. E. Sipols, C. Simón, and D. Mostaza-Colado, “A forecast model applied to monitor crops dynamics using vegetation indices (Ndvi),” Applied Sciences (Switzerland), Vol. 11(4), pp. 1–25, 2021. [CrossRef]
  • R. Sonobe, Y. Yamaya, H. Tani, X. Wang, N. Kobayashi, and K. ichiro Mochizuki, “Assessing the suitability of data from Sentinel-1A and 2A for crop classification,” GIsci Remote Sensing, Vol. 54(6), pp. 918–938, 2017. [CrossRef]
  • R. Azar, P. Villa, D. Stroppiana, A. Crema, M. Boschetti, and P. A. Brivio, “Assessing in-season crop classification performance using satellite data: A test case in Northern Italy,” European Journal of Remote Sensing, Vol. 49, pp. 361–380, 2016. [CrossRef]
  • A. Bouguettaya, H. Zarzour, A. Kechida, and A. M. Taberkit, “Deep learning techniques to classify agricultural crops through UAV imagery: a review,” Neural Computing and Applications, Vol. 34(12), pp. 9511–9536, 2022. [CrossRef]
  • N. Kussul, M. Lavreniuk, S. Skakun, and A. Shelestov, “Deep learning classification of land cover and crop types using remote sensing data,” IEEE Geoscience and Remote Sensing Letters, Vol. 14(5), pp. 778–782, 2017. [CrossRef]
  • N. Kussul, S. Skakun, A. Shelestov, M. Lavreniuk, B. Yailymov, and O. Kussul, “Regional scale crop mapping using multi-temporal satellite imagery,” in International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, International Society for Photogrammetry and Remote Sensing, 2015, pp. 45–52, 2015. [CrossRef]
  • N. Kussul, G. Lemoine, F. J. Gallego, S. V. Skakun, M. Lavreniuk, and A. Y. Shelestov, “Parcel-Based Crop Classification in Ukraine Using Landsat-8 Data and Sentinel-1A Data,” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, Vol. 9(6), pp. 2500–2508, 2016. [CrossRef]
  • L. Pan, H. Xia, X. Zhao, Y. Guo, and Y. Qin, “Mapping winter crops using a phenology algorithm, time-series sentinel-2 and landsat-7/8 images, and google earth engine,” Remote Sens (Basel), Vol. 13(13), Article 2510, 2021. [CrossRef]
There are 35 citations in total.

Details

Primary Language English
Subjects Precision Agriculture Technologies, Agricultural Automatization
Journal Section Research Articles
Authors

Saurabh Pargaien 0000-0003-4500-7313

Rıshı Prakash 0000-0001-6471-5935

Ved Prakash Dubey This is me 0000-0003-0278-8172

Devendra Singh This is me 0000-0001-8216-1323

Publication Date September 30, 2024
Submission Date March 5, 2024
Acceptance Date April 20, 2024
Published in Issue Year 2024 Volume: 7 Issue: 3

Cite

APA Pargaien, S., Prakash, R., Dubey, V. P., Singh, D. (2024). Crop cover identification based on different vegetation indices by using machine learning algorithms. Environmental Research and Technology, 7(3), 422-434. https://doi.org/10.35208/ert.1446909
AMA Pargaien S, Prakash R, Dubey VP, Singh D. Crop cover identification based on different vegetation indices by using machine learning algorithms. ERT. September 2024;7(3):422-434. doi:10.35208/ert.1446909
Chicago Pargaien, Saurabh, Rıshı Prakash, Ved Prakash Dubey, and Devendra Singh. “Crop Cover Identification Based on Different Vegetation Indices by Using Machine Learning Algorithms”. Environmental Research and Technology 7, no. 3 (September 2024): 422-34. https://doi.org/10.35208/ert.1446909.
EndNote Pargaien S, Prakash R, Dubey VP, Singh D (September 1, 2024) Crop cover identification based on different vegetation indices by using machine learning algorithms. Environmental Research and Technology 7 3 422–434.
IEEE S. Pargaien, R. Prakash, V. P. Dubey, and D. Singh, “Crop cover identification based on different vegetation indices by using machine learning algorithms”, ERT, vol. 7, no. 3, pp. 422–434, 2024, doi: 10.35208/ert.1446909.
ISNAD Pargaien, Saurabh et al. “Crop Cover Identification Based on Different Vegetation Indices by Using Machine Learning Algorithms”. Environmental Research and Technology 7/3 (September 2024), 422-434. https://doi.org/10.35208/ert.1446909.
JAMA Pargaien S, Prakash R, Dubey VP, Singh D. Crop cover identification based on different vegetation indices by using machine learning algorithms. ERT. 2024;7:422–434.
MLA Pargaien, Saurabh et al. “Crop Cover Identification Based on Different Vegetation Indices by Using Machine Learning Algorithms”. Environmental Research and Technology, vol. 7, no. 3, 2024, pp. 422-34, doi:10.35208/ert.1446909.
Vancouver Pargaien S, Prakash R, Dubey VP, Singh D. Crop cover identification based on different vegetation indices by using machine learning algorithms. ERT. 2024;7(3):422-34.