Leveraging Remote Sensing Data for Yield Prediction with Deep Transfer Learning

被引:3
|
作者
Huber, Florian [1 ]
Inderka, Alvin [1 ]
Steinhage, Volker [1 ]
机构
[1] Univ Bonn, Dept Comp Sci 4, D-53121 Bonn, Germany
关键词
remote sensing; yield prediction; deep learning; transfer learning; regularization; Gaussian process;
D O I
10.3390/s24030770
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Remote sensing data represent one of the most important sources for automized yield prediction. High temporal and spatial resolution, historical record availability, reliability, and low cost are key factors in predicting yields around the world. Yield prediction as a machine learning task is challenging, as reliable ground truth data are difficult to obtain, especially since new data points can only be acquired once a year during harvest. Factors that influence annual yields are plentiful, and data acquisition can be expensive, as crop-related data often need to be captured by experts or specialized sensors. A solution to both problems can be provided by deep transfer learning based on remote sensing data. Satellite images are free of charge, and transfer learning allows recognition of yield-related patterns within countries where data are plentiful and transfers the knowledge to other domains, thus limiting the number of ground truth observations needed. Within this study, we examine the use of transfer learning for yield prediction, where the data preprocessing towards histograms is unique. We present a deep transfer learning framework for yield prediction and demonstrate its successful application to transfer knowledge gained from US soybean yield prediction to soybean yield prediction within Argentina. We perform a temporal alignment of the two domains and improve transfer learning by applying several transfer learning techniques, such as L2-SP, BSS, and layer freezing, to overcome catastrophic forgetting and negative transfer problems. Lastly, we exploit spatio-temporal patterns within the data by applying a Gaussian process. We are able to improve the performance of soybean yield prediction in Argentina by a total of 19% in terms of RMSE and 39% in terms of R2 compared to predictions without transfer learning and Gaussian processes. This proof of concept for advanced transfer learning techniques for yield prediction and remote sensing data in the form of histograms can enable successful yield prediction, especially in emerging and developing countries, where reliable data are usually limited.
引用
收藏
页数:18
相关论文
共 50 条
  • [11] Deep Learning Prediction of Thunderstorm Severity Using Remote Sensing Weather Data
    Essa, Yaseen
    Hunt, Hugh G. P.
    Gijben, Morne
    Ajoodha, Ritesh
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2022, 15 : 4004 - 4013
  • [12] Deep Learning and Remote Sensing Data Analysis
    Zhang L.
    Li Y.
    Hou Z.
    Li X.
    Geng H.
    Wang Y.
    Li J.
    Zhu P.
    Mei J.
    Jiang Y.
    Li S.
    Xin Q.
    Cui Y.
    Liu S.
    1857, Editorial Board of Medical Journal of Wuhan University (45): : 1857 - 1864
  • [13] Leveraging OpenStreetMap and Multimodal Remote Sensing Data with Joint Deep Learning for Wastewater Treatment Plants Detection
    Li, Hao
    Zech, Johannes
    Hong, Danfeng
    Ghamisi, Pedram
    Schultz, Michael
    Zipf, Alexander
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2022, 110
  • [14] Enhancing materials property prediction by leveraging computational and experimental data using deep transfer learning
    Dipendra Jha
    Kamal Choudhary
    Francesca Tavazza
    Wei-keng Liao
    Alok Choudhary
    Carelyn Campbell
    Ankit Agrawal
    Nature Communications, 10
  • [15] Enhancing materials property prediction by leveraging computational and experimental data using deep transfer learning
    Jha, Dipendra
    Choudhary, Kamal
    Tavazza, Francesca
    Liao, Wei-keng
    Choudhary, Alok
    Campbell, Carelyn
    Agrawal, Ankit
    NATURE COMMUNICATIONS, 2019, 10 (1)
  • [16] Yield prediction in a peanut breeding program using remote sensing data and machine learning algorithms
    Pugh, N. Ace
    Young, Andrew
    Ojha, Manisha
    Emendack, Yves
    Sanchez, Jacobo
    Xin, Zhanguo
    Puppala, Naveen
    FRONTIERS IN PLANT SCIENCE, 2024, 15
  • [17] Wheat Yield Prediction Using Machine Learning Method Based on UAV Remote Sensing Data
    Yang, Shurong
    Li, Lei
    Fei, Shuaipeng
    Yang, Mengjiao
    Tao, Zhiqiang
    Meng, Yaxiong
    Xiao, Yonggui
    DRONES, 2024, 8 (07)
  • [18] Advancing flood disaster management: leveraging deep learning and remote sensing technologies
    Mohammad Roohi
    Hamid Reza Ghafouri
    Seyed Mohammad Ashrafi
    Acta Geophysica, 2025, 73 (1) : 557 - 575
  • [19] Distributed Deep Learning for Remote Sensing Data Interpretation
    Haut, Juan M.
    Paoletti, Mercedes E.
    Moreno-Alvarez, Sergio
    Plaza, Javier
    Rico-Gallego, Juan-Antonio
    Plaza, Antonio
    PROCEEDINGS OF THE IEEE, 2021, 109 (08) : 1320 - 1349
  • [20] Improving harvester yield maps postprocessing leveraging remote sensing data in rice crop
    D. Fita
    C. Rubio
    B. Franch
    S. Castiñeira-Ibáñez
    D. Tarrazó-Serrano
    A. San Bautista
    Precision Agriculture, 2025, 26 (2)