Mapping heterogeneous land use/land cover and crop types in Senegal using sentinel-2 data and machine learning algorithms

被引:2
|
作者
Gumma, Murali Krishna [1 ]
Panjala, Pranay [2 ]
Teluguntla, Pardhasaradhi [3 ]
机构
[1] Int Crops Res Inst Semi Arid Trop, Geospatial Sci & Big Data, BP 12404, Niamey, Niger
[2] Int Crops Res Inst Semi Arid Trop, Geospatial Sci & Big Data, Patancheru, India
[3] Bay Area Environm Res Inst, NASA Ames Res Pk, Moffett Field, CA USA
关键词
Cropping pattern; sentinel-2; machine learning algorithms; spectral matching techniques; semi-arid; Crop type mapping; TIME-SERIES; RANDOM FOREST; FOOD SECURITY; EXTENT; MODIS; AREA; CLASSIFICATION; PHENOLOGY; IMAGERY; CROPLANDS;
D O I
10.1080/17538947.2024.2378815
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
In rainfed and dryland agricultural areas with smallholder farms (less than 2 ha), crop diversity is high due to farmers' decisions and local climatic conditions, leading to a complex spatial-temporal distribution of crops. Monitoring and mapping crops is crucial for food security and implementing agricultural support programs. This study aims to map crop types across Senegal using Sentinel-2 satellite imagery and the limited ground reference data available, which has been increasing recently. The study compares conventional supervised classification algorithms to unsupervised classification algorithms using high-resolution satellite imagery. Crop type classification for 2020 in Senegal employed supervised machine learning algorithms, including Classification and Regression Trees (CART), Random Forest (RF), and Support Vector Machine (SVM) on the Google Earth Engine (GEE) cloud platform, and the unsupervised Iso-clustering classification algorithm with Spectral Matching Techniques (SMTs). Due to limited ground data, supervised classifiers achieved 45-55% accuracy, whereas the unsupervised semi-automatic approach achieved over 75% accuracy. The study indicates that supervised classifiers' performance depends on ground data quantity, while SMT shows good performance even with limited ground data. This SMT approach is valuable for classifying crop types in dryland areas with smallholder farms and diverse cropping patterns.
引用
收藏
页数:18
相关论文
共 50 条
  • [21] Fast Urban Land Cover Mapping Exploiting Sentinel-1 and Sentinel-2 Data
    Petrushevsky, Naomi
    Manzoni, Marco
    Monti-Guarnieri, Andrea
    REMOTE SENSING, 2022, 14 (01)
  • [22] Land cover mapping at national scale with Sentinel-2 and LUCAS: a case study in Portugal
    Benevides, Pedro Jose
    Silva, Nuno
    Costa, Hugo
    Moreira, Francisco D.
    Moraes, Daniel
    Castelli, Mauro
    Caetano, Mario
    REMOTE SENSING FOR AGRICULTURE, ECOSYSTEMS, AND HYDROLOGY XXIII, 2021, 11856
  • [23] Land Cover Mapping in Cloud-Prone Tropical Areas Using Sentinel-2 Data: Integrating Spectral Features with Ndvi Temporal Dynamics
    Huang, Chong
    Zhang, Chenchen
    He, Yun
    Liu, Qingsheng
    Li, He
    Su, Fenzhen
    Liu, Gaohuan
    Bridhikitti, Arika
    REMOTE SENSING, 2020, 12 (07)
  • [24] Evaluation of machine learning algorithms for forest stand species mapping using Sentinel-2 imagery and environmental data in the Polish Carpathians
    Grabska, Ewa
    Frantz, David
    Ostapowicz, Katarzyna
    REMOTE SENSING OF ENVIRONMENT, 2020, 251
  • [25] Improving Land-Cover and Crop-Types Classification of Sentinel-2 Satellite Images
    Laban, Noureldin
    Abdellatif, Bassam
    Ebeid, Hala M.
    Shedeed, Howida A.
    Tolba, Mohamed F.
    INTERNATIONAL CONFERENCE ON ADVANCED MACHINE LEARNING TECHNOLOGIES AND APPLICATIONS (AMLTA2018), 2018, 723 : 449 - 458
  • [26] Sentinel-1 and Sentinel-2 Data for Savannah Land Cover Mapping: Optimising the Combination of Sensors and Seasons
    Borges, Joana
    Higginbottom, Thomas P.
    Symeonakis, Elias
    Jones, Martin
    REMOTE SENSING, 2020, 12 (23) : 1 - 21
  • [27] Effect of the Synergetic Use of Sentinel-1, Sentinel-2, LiDAR and Derived Data in Land Cover Classification of a Semiarid Mediterranean Area Using Machine Learning Algorithms
    Valdivieso-Ros, Carmen
    Alonso-Sarria, Francisco
    Gomariz-Castillo, Francisco
    REMOTE SENSING, 2023, 15 (02)
  • [28] Land Use and Land Cover Mapping with VHR and Multi-Temporal Sentinel-2 Imagery
    Cuypers, Suzanna
    Nascetti, Andrea
    Vergauwen, Maarten
    REMOTE SENSING, 2023, 15 (10)
  • [29] Exploring machine learning algorithms for mapping crop types in a heterogeneous agriculture landscape using Sentinel-2 data. A case study of Free State Province, South Africa
    Mazarire, Theresa Taona
    Ratshiedana, Phathutshedzo Eugene
    Nyamugama, Adolph
    Adam, Elhadi
    Chirima, George
    SOUTH AFRICAN JOURNAL OF GEOMATICS, 2020, 9 (02): : 333 - 347
  • [30] INVESTIGATIONS ON THE POTENTIAL OF HYPERSPECTRAL AND SENTINEL-2 DATA FOR LAND-COVER / LAND-USE CLASSIFICATION
    Weinmann, M.
    Maier, P. M.
    Florath, J.
    Weidner, U.
    ISPRS TC I MID-TERM SYMPOSIUM INNOVATIVE SENSING - FROM SENSORS TO METHODS AND APPLICATIONS, 2018, 4-1 : 155 - 162