Using machine learning to generate an open-access cropland map from satellite images time series in the Indian Himalayan region

被引:0
|
作者
Li, Danya [1 ,2 ]
Gajardo, Joaquin [1 ]
Volpi, Michele [3 ,4 ]
Defraeye, Thijs [1 ]
机构
[1] Empa, Swiss Fed Labs Mat Sci & Technol, Lab Biomimet Membranes & Text, Lerchenfeldstr 5, CH-9014 St Gallen, Switzerland
[2] Ecole Polytech Fed Lausanne, Lausanne, Switzerland
[3] Swiss Fed Inst Technol, Swiss Data Sci Ctr, Zurich, Switzerland
[4] Ecole Polytech Fed Lausanne, Lausanne, Switzerland
关键词
Cropland mapping; Smallholders; Remote sensing; High-altitude region; Random forest; Feature engineering; Google earth engine; Sentinel-2; EXTENT;
D O I
10.1016/j.rsase.2023.101057
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Crop maps are crucial for agricultural monitoring and food management and can additionally support domain-specific applications, such as setting cold supply chain infrastructure in developing countries. Machine learning (ML) models, combined with freely-available satellite imagery, can be used to produce cost-effective and high spatial-resolution crop maps. However, accessing ground truth data for supervised learning is especially challenging in developing countries due to factors such as smallholding and fragmented geography, which often results in a lack of crop type maps or even reliable cropland maps. Our area of interest for this study lies in Himachal Pradesh, India, where we aim at producing an open-access binary cropland map at 10-m resolution for the Kullu, Shimla, and Mandi districts. To this end, we developed an ML pipeline that relies on Sen-tinel-2 satellite images time series. We investigated two pixel-based supervised classifiers, sup-port vector machines (SVM) and random forest (RF), which are used to classify per-pixel time series for binary cropland mapping. The ground truth data used for training, validation and testing was manually annotated from a combination of field survey reference points and visual interpretation of very high resolution (VHR) imagery. We trained and validated the models via spatial cross-validation to account for local spatial autocorrelation and improve the generalization capability of the model. We tested the model on hold out test sets of each district, achieving an aver-age accuracy for the RF (our best model) of 87%. We noticed NIR band at the early and late stage of the apple harvest season (main crop in the region) to be of critical importance for the model. Finally, we used this model to generate a cropland map for three districts of Himachal Pradesh, spanning 14,600 km2, which improves the resolution and quality of existing public maps, and made the code open-source.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] Identifying the linear region based on machine learning to calculate the largest Lyapunov exponent from chaotic time series
    Zhou, Shuang
    Wang, Xingyuan
    CHAOS, 2018, 28 (12)
  • [32] Developing a flexible learning activity on biodiversity and spatial scale concepts using open-access vegetation datasets from the National Ecological Observatory Network
    Styers, Diane M.
    Schafer, Jennifer L.
    Kolozsvary, Mary Beth
    Brubaker, Kristen M.
    Scanga, Sara E.
    Anderson, Laurel J.
    Mitchell, Jessica J.
    Barnett, David
    ECOLOGY AND EVOLUTION, 2021, 11 (09): : 3660 - 3671
  • [33] Agricultural cropland extent and areas of South Asia derived using Landsat satellite 30-m time-series big-data using random forest machine learning algorithms on the Google Earth Engine cloud
    Gumma, Murali Krishna
    Thenkabail, Prasad S.
    Teluguntla, Pardhasaradhi G.
    Oliphant, Adam
    Xiong, Jun
    Giri, Chandra
    Pyla, Vineetha
    Dixit, Sreenath
    Whitbread, Anthony M.
    GISCIENCE & REMOTE SENSING, 2020, 57 (03) : 302 - 322
  • [34] Machine Learning Regression Techniques for the Silage Maize Yield Prediction Using Time-Series Images of Landsat 8 OLI
    Aghighi, Hossein
    Azadbakht, Mohsen
    Ashourloo, Davoud
    Shahrabi, Hamid Salehi
    Radiom, Soheil
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2018, 11 (12) : 4563 - 4577
  • [35] Predicting future dynamics from short-term time series using an Anticipated Learning Machine
    Chuan Chen
    Rui Li
    Lin Shu
    Zhiyu He
    Jining Wang
    Chengming Zhang
    Huanfei Ma
    Kazuyuki Aihara
    Luonan Chen
    NationalScienceReview, 2020, 7 (06) : 1079 - 1091
  • [36] Predicting future dynamics from short-term time series using an Anticipated Learning Machine
    Chen, Chuan
    Li, Rui
    Shu, Lin
    He, Zhiyu
    Wang, Jining
    Zhang, Chengming
    Ma, Huanfei
    Aihara, Kazuyuki
    Chen, Luonan
    NATIONAL SCIENCE REVIEW, 2020, 7 (06) : 1079 - 1091
  • [37] Predicting future dynamics from short-Term time series using an Anticipated Learning Machine
    Chen, Chuan
    Li, Rui
    Shu, Lin
    He, Zhiyu
    Wang, Jining
    Zhang, Chengming
    Ma, Huanfei
    Aihara, Kazuyuki
    Chen, Luonan
    National Science Review, 2020, 7 (06): : 1079 - 1091
  • [38] Forecasting of Solar Irradiances using Time Series and Machine Learning Models: A Case Study from India
    Sarita Sheoran
    Singh R.S.
    Pasari S.
    Kulshrestha R.
    Applied Solar Energy (English translation of Geliotekhnika), 2022, 58 (01): : 137 - 151
  • [39] Forecasting water resources from satellite image time series using a graph-based learning strategy
    Dufourg, Corentin
    Pelletier, Charlotte
    May, Stephane
    Lefevre, Sebastien
    MID-TERM SYMPOSIUM THE ROLE OF PHOTOGRAMMETRY FOR A SUSTAINABLE WORLD, VOL. 48-2, 2024, : 81 - 88
  • [40] Adaptive modeling of satellite-derived nighttime lights time-series for tracking urban change processes using machine learning
    Chakraborty, Srija
    Stokes, Eleanor C.
    Weiss, Marie
    REMOTE SENSING OF ENVIRONMENT, 2023, 298